Misplaced Pages

Fuzzy set: Difference between revisions

Article snapshot taken from[REDACTED] with creative commons attribution-sharealike license. Give it a read and then ask your questions in the chat. We can research this topic together.
Browse history interactively← Previous editContent deleted Content addedVisualWikitext
Revision as of 11:35, 26 May 2007 edit124.154.152.223 (talk) +ja← Previous edit Latest revision as of 11:58, 15 January 2025 edit undoJellysandwich0 (talk | contribs)Extended confirmed users49,898 editsmNo edit summary 
(590 intermediate revisions by more than 100 users not shown)
Line 1: Line 1:
{{Short description|Sets whose elements have degrees of membership}}
'''Fuzzy sets''' are an extension of classical ] and are used in ]. In classical set theory the membership of elements in relation to a set is assessed in binary terms according to a crisp condition — an element either belongs or does not belong to the set. By contrast, fuzzy set theory permits the gradual assessment of the membership of elements in relation to a set; this is described with the aid of a ] valued in the real unit interval . Fuzzy sets are an extension of classical set theory since, for a certain ], a membership function may act as an ], mapping all elements to either 1 or 0, as in the classical notion. Fuzzy sets have been introduced by ] (1965).


In ], '''fuzzy sets''' (also known as '''uncertain sets''') are ] whose ] have degrees of membership. Fuzzy sets were introduced independently by ] in 1965 as an extension of the classical notion of set.<ref>L. A. Zadeh (1965) {{Webarchive|url=https://web.archive.org/web/20150813153834/http://www.cs.berkeley.edu/~zadeh/papers/Fuzzy%20Sets-Information%20and%20Control-1965.pdf |date=2015-08-13 }}. ''Information and Control'' 8 (3) 338–353.</ref><ref>Klaua, D. (1965) Über einen Ansatz zur mehrwertigen Mengenlehre. Monatsb. Deutsch. Akad. Wiss. Berlin 7, 859–876. A recent in-depth analysis of this paper has been provided by {{Cite journal | last1 = Gottwald | first1 = S. | title = An early approach toward graded identity and graded membership in set theory | doi = 10.1016/j.fss.2009.12.005 | journal = Fuzzy Sets and Systems | volume = 161 | issue = 18 | pages = 2369–2379 | year = 2010 }}</ref>
== Definition ==
At the same time, {{harvtxt|Salii|1965}} defined a more general kind of structure called an "]", which he studied in an ]ic context;
fuzzy relations are special cases of ''L''-relations when ''L'' is the ] .
They are now used throughout ], having applications in areas such as ] {{harv|De Cock|Bodenhofer|Kerre|2000}}, ] {{harv|Kuzmin|1982}}, and ] {{harv|Bezdek|1978}}.


In classical ], the membership of elements in a set is assessed in binary terms according to a ]—an element either belongs or does not belong to the set. By contrast, fuzzy set theory permits the gradual assessment of the membership of elements in a set; this is described with the aid of a ] valued in the ] unit interval . Fuzzy sets generalize classical sets, since the ]s (aka characteristic functions) of classical sets are special cases of the membership functions of fuzzy sets, if the latter only takes values 0 or 1.<ref name=":0">D. Dubois and H. Prade (1988) Fuzzy Sets and Systems. Academic Press, New York.</ref> In fuzzy set theory, classical bivalent sets are usually called ''crisp sets''. The fuzzy set theory can be used in a wide range of domains in which information is incomplete or imprecise, such as ].<ref>{{Cite journal | doi=10.1186/1471-2105-7-S4-S7| pmid=17217525| pmc=1780132| title=FM-test: A fuzzy-set-theory-based approach to differential gene expression data analysis| journal=BMC Bioinformatics| volume=7| pages=S7| year=2006| last1=Liang| first1=Lily R.| last2=Lu| first2=Shiyong| last3=Wang| first3=Xuena| last4=Lu| first4=Yi| last5=Mandal| first5=Vinay| last6=Patacsil| first6=Dorrelyn| last7=Kumar| first7=Deepak| issue=Suppl 4| doi-access=free}}</ref>
Specifically, a fuzzy set on a classical set <math>\Chi</math> is defined as follows:


==Definition==
<center><math>\tilde{\mathit{A}}=\{(x,\mu_{A}(x))\mid x \in \Chi\}</math></center>


A fuzzy set is a pair <math>(U, m)</math> where <math>U</math> is a set (often required to be ]) and <math>m\colon U \rightarrow </math> a membership function.
The membership function <math>\mu_{A}(x)</math> quantifies the grade of membership of the elements <math>x</math> to the ''fundamental set'' <math>\Chi</math>. An element mapping to the value 0 means that the member is not included in the given set, 1 describes a fully included member. Values strictly between 0 and 1 characterize the fuzzy members.
The reference set <math>U</math> (sometimes denoted by <math>\Omega</math> or <math>X</math>) is called '''universe of discourse''', and for each <math>x\in U,</math> the value <math>m(x)</math> is called the '''grade''' of membership of <math>x</math> in <math>(U,m)</math>.
The function <math>m = \mu_A</math> is called the '''membership function''' of the fuzzy set <math>A = (U, m)</math>.


For a finite set <math>U=\{x_1,\dots,x_n\},</math> the fuzzy set <math>(U, m)</math> is often denoted by <math>\{m(x_1)/x_1,\dots,m(x_n)/x_n\}.</math>
<center>]</center>


Let <math>x \in U</math>. Then <math>x</math> is called
<center>Fuzzy set and crisp set</center>
* '''not included''' in the fuzzy set <math>(U,m)</math> if {{nowrap|<math>m(x) = 0</math>}} (no member),
<!-- This is only true for so-called "normal" fuzzy sets ("subnormal fuzzy sets" can have sup Ax < 1)
* '''fully included''' if {{nowrap|<math>m(x) = 1</math>}} (full member),
The following holds for the functional values of the membership function <math>\mu_{A}(x)</math>
* '''partially included''' if {{nowrap|<math>0 < m(x) < 1</math> (fuzzy member).<ref>{{Cite web|url=http://www.aaai.org/aitopics/pmwiki/pmwiki.php/AITopics/FuzzyLogic|archive-url=https://web.archive.org/web/20080805071058/http://www.aaai.org/aitopics/pmwiki/pmwiki.php/AITopics/FuzzyLogic|url-status=dead|title=AAAI|archive-date=August 5, 2008}}</ref>}}
<center><math>
The (crisp) set of all fuzzy sets on a universe <math>U</math> is denoted with <math>SF(U)</math> (or sometimes just <math>F(U)</math>).{{cn|date=December 2024}}
\begin{matrix}
\mu_{A}(x)\ge0 & \forall x\in\Chi \\
\sup_{x\in X}=1 & \\
\end{matrix}
</math></center>
-->


===Crisp sets related to a fuzzy set===
Sometimes, a more general definition is used, where membership functions take values in an arbitrary fixed ] or ] <math>L</math>; usually it is required that <math>L</math> be at least a ] or ]. The usual membership functions with values in are then called -valued membership functions.
For any fuzzy set <math>A = (U,m)</math> and <math>\alpha \in </math> the following crisp sets are defined:
* <math>A^{\ge\alpha} = A_\alpha = \{x \in U \mid m(x)\ge\alpha\}</math> is called its '''α-cut''' (aka '''α-level set''')
* <math>A^{>\alpha} = A'_\alpha = \{x \in U \mid m(x)>\alpha\}</math> is called its '''strong α-cut''' (aka '''strong α-level set''')
* <math>S(A) = \operatorname{Supp}(A) = A^{>0} = \{x \in U \mid m(x)>0\}</math> is called its '''support'''
* <math>C(A) = \operatorname{Core}(A) = A^{=1} = \{x \in U \mid m(x)=1\}</math> is called its '''core''' (or sometimes '''kernel''' <math>\operatorname{Kern}(A)</math>).


Note that some authors understand "kernel" in a different way; see below.
== Applications ==
The fuzzy set B, where B = {(3,0.3), (4,0.7), (5,1), (6,0.4)} would be enumerated as B = {0.3/3, 0.7/4, 1/5, 0.4/6} using standard fuzzy notation. Note that any value with a membership grade of zero does not appear in the expression of the set. The standard notation for finding the membership grade of the fuzzy set B at 6 is μB(6) = 0.4.


=== Fuzzy logic === ===Other definitions===
* A fuzzy set <math>A = (U,m)</math> is '''empty''' (<math>A = \varnothing</math>) ] (if and only if)
As an extension of the case of ], valuations (<math>\mu : \mathit{V}_o \to \mathit{W}</math>) of propositional variables (<math>\mathit{V}_o</math>) into a set of membership degrees (<math>\mathit{W}</math>) can be thought of as ] mapping ] into fuzzy sets (or more formally, into an ordered set of fuzzy pairs, called a fuzzy relation). With these valuations, many-valued logic can be extended to allow for fuzzy ] from which graded conclusions may be drawn.
::]<math> x \in U: \mu_A(x) = m(x) = 0</math>


* Two fuzzy sets <math>A</math> and <math>B</math> are '''equal''' (<math>A = B</math>) iff
This extension is sometimes called "fuzzy logic in the narrow sense" as opposed to "fuzzy logic in the wider sense," which originated in the ] fields of ] control and ], and which encompasses many topics involving fuzzy sets and "approximated reasoning."
::<math>\forall x \in U: \mu_A(x) = \mu_B(x)</math>

* A fuzzy set <math>A</math> is '''included''' in a fuzzy set <math>B</math> (<math>A \subseteq B</math>) iff
::<math>\forall x \in U: \mu_A(x) \le \mu_B(x)</math>

* For any fuzzy set <math>A</math>, any element <math>x \in U</math> that satisfies
::<math>\mu_A(x) = 0.5</math>
:is called a '''crossover point'''.

* Given a fuzzy set <math>A</math>, any <math>\alpha \in </math>, for which <math>A^{=\alpha} = \{x \in U \mid \mu_A(x) = \alpha\}</math> is not empty, is called a '''level''' of A.
* The '''level set''' of A is the set of all levels <math>\alpha\in</math> representing distinct cuts. It is the ] of <math>\mu_A</math>:
::<math>\Lambda_A = \{\alpha \in : A^{=\alpha} \ne \varnothing\} = \{\alpha \in : {}</math>]<math>x \in U(\mu_A(x) = \alpha)\} = \mu_A(U)</math>

* For a fuzzy set <math>A</math>, its '''height''' is given by
::<math>\operatorname{Hgt}(A) = \sup \{\mu_A(x) \mid x \in U\} = \sup(\mu_A(U))</math>
:where <math>\sup</math> denotes the ], which exists because <math>\mu_A(U)</math> is non-empty and bounded above by 1. If ''U'' is finite, we can simply replace the supremum by the maximum.

* A fuzzy set <math>A</math> is said to be '''normalized''' iff
::<math>\operatorname{Hgt}(A) = 1</math>
:In the finite case, where the supremum is a maximum, this means that at least one element of the fuzzy set has full membership. A non-empty fuzzy set <math>A</math> may be normalized with result <math>\tilde{A}</math> by dividing the membership function of the fuzzy set by its height:
::<math>\forall x \in U: \mu_{\tilde{A}}(x) = \mu_A(x)/\operatorname{Hgt}(A)</math>
:Besides similarities this differs from the usual ] in that the normalizing constant is not a sum.

* For fuzzy sets <math>A</math> of real numbers <math>(U \subseteq \mathbb{R})</math> with ] support, the '''width''' is defined as
::<math>\operatorname{Width}(A) = \sup(\operatorname{Supp}(A)) - \inf(\operatorname{Supp}(A))</math>
:In the case when <math>\operatorname{Supp}(A)</math> is a finite set, or more generally a ], the width is just
::<math>\operatorname{Width}(A) = \max(\operatorname{Supp}(A)) - \min(\operatorname{Supp}(A))</math>
:In the ''n''-dimensional case <math>(U \subseteq \mathbb{R}^n)</math> the above can be replaced by the ''n''-dimensional volume of <math>\operatorname{Supp}(A)</math>.
:In general, this can be defined given any ] on ''U'', for instance by integration (e.g. ]) of <math>\operatorname{Supp}(A)</math>.

* A real fuzzy set <math>A (U \subseteq \mathbb{R})</math> is said to be '''convex''' (in the fuzzy sense, not to be confused with a crisp ]), iff
::<math>\forall x,y \in U, \forall\lambda\in: \mu_A(\lambda{x} + (1-\lambda)y) \ge \min(\mu_A(x),\mu_A(y))</math>.
: Without loss of generality, we may take ''x'' ≤ ''y'', which gives the equivalent formulation
::<math>\forall z \in : \mu_A(z) \ge \min(\mu_A(x),\mu_A(y))</math>.
: This definition can be extended to one for a general ] ''U'': we say the fuzzy set <math>A</math> is '''convex''' when, for any subset ''Z'' of ''U'', the condition
::<math>\forall z \in Z: \mu_A(z) \ge \inf(\mu_A(\partial Z))</math>
: holds, where <math>\partial Z</math> denotes the ] of ''Z'' and <math>f(X) = \{f(x) \mid x \in X\}</math> denotes the ] of a set ''X'' (here <math>\partial Z</math>) under a function ''f'' (here <math>\mu_A</math>).

===Fuzzy set operations===
{{main|Fuzzy set operations}}
Although the complement of a fuzzy set has a single most common definition, the other main operations, union and intersection, do have some ambiguity.
* For a given fuzzy set <math>A</math>, its '''complement''' <math>\neg{A}</math> (sometimes denoted as <math>A^c</math> or <math>cA</math>) is defined by the following membership function:
::<math>\forall x \in U: \mu_{\neg{A}}(x) = 1 - \mu_A(x)</math>.
* Let t be a ], and s the corresponding s-norm (aka t-conorm). Given a pair of fuzzy sets <math>A, B</math>, their '''intersection''' <math>A\cap{B}</math> is defined by:
::<math>\forall x \in U: \mu_{A\cap{B}}(x) = t(\mu_A(x),\mu_B(x))</math>,
:and their '''union''' <math>A\cup{B}</math> is defined by:
::<math>\forall x \in U: \mu_{A\cup{B}}(x) = s(\mu_A(x),\mu_B(x))</math>.

By the definition of the t-norm, we see that the union and intersection are ], ], ], and have both a ] and an ]. For the intersection, these are ∅ and ''U'', respectively, while for the union, these are reversed. However, the union of a fuzzy set and its complement may not result in the full universe ''U'', and the intersection of them may not give the empty set ∅. Since the intersection and union are associative, it is natural to define the intersection and union of a finite ] of fuzzy sets recursively. It is noteworthy that the generally accepted standard operators for the union and intersection of fuzzy sets are the max and min operators:
* <math>\forall x \in U: \mu_{A\cup{B}}(x) = \max(\mu_A(x),\mu_B(x))</math> and <math>\mu_{A\cap{B}}(x) = \min(\mu_A(x),\mu_B(x))</math>.<ref name="BGFuzzy">{{cite journal|last1=Bellman|first1=Richard|last2=Giertz|first2=Magnus|date=1973|title=On the analytic formalism of the theory of fuzzy sets|journal=Information Sciences|volume=5|pages=149–156|doi=10.1016/0020-0255(73)90009-1}}</ref>

* If the standard negator <math>n(\alpha) = 1 - \alpha, \alpha \in </math> is replaced by another ], the fuzzy set difference may be generalized by
::<math>\forall x \in U: \mu_{\neg{A}}(x) = n(\mu_A(x)).</math>
* The triple of fuzzy intersection, union and complement form a '''De Morgan Triplet'''. That is, ] extend to this triple.
:Examples for fuzzy intersection/union pairs with standard negator can be derived from samples provided in the article about ]s.

:The fuzzy intersection is not ] in general, because the standard t-norm {{math|min}} is the only one which has this property. Indeed, if the arithmetic multiplication is used as the t-norm, the resulting fuzzy intersection operation is not idempotent. That is, iteratively taking the intersection of a fuzzy set with itself is not trivial. It instead defines the '''''m''-th power''' of a fuzzy set, which can be canonically generalized for non-] exponents in the following way:

* For any fuzzy set <math>A</math> and <math>\nu \in \R^+</math> the &nu;-th power of <math>A</math> is defined by the membership function:
::<math>\forall x \in U: \mu_{A^{\nu}}(x) = \mu_{A}(x)^{\nu}.</math>
The case of exponent two is special enough to be given a name.
* For any fuzzy set <math>A</math> the '''concentration''' <math>CON(A) = A^2</math> is defined
::<math>\forall x \in U: \mu_{CON(A)}(x) = \mu_{A^2}(x) = \mu_{A}(x)^2.</math>
Taking <math>0^0 = 1</math>, we have <math>A^0 = U</math> and <math>A^1 = A.</math>

* Given fuzzy sets <math>A, B</math>, the fuzzy set '''difference''' <math>A \setminus B</math>, also denoted <math> A - B</math>, may be defined straightforwardly via the membership function:
::<math>\forall x \in U: \mu_{A\setminus{B}}(x) = t(\mu_A(x),n(\mu_B(x))),</math>
:which means <math>A \setminus B = A \cap \neg{B}</math>, e. g.:
::<math>\forall x \in U: \mu_{A\setminus{B}}(x) = \min(\mu_A(x),1 - \mu_B(x)).</math><ref name="Vemuri2014">N.R. Vemuri, A.S. Hareesh, M.S. Srinath: , in: Fuzzy Sets Theory and Applications 2014, Liptovský Ján, Slovak Republic</ref>

:Another proposal for a set difference could be:
::<math>\forall x \in U: \mu_{A-{B}}(x) = \mu_A(x) - t(\mu_A(x),\mu_B(x)).</math><ref name="Vemuri2014" />

* Proposals for symmetric fuzzy set differences have been made by Dubois and Prade (1980), either by taking the ], giving
::<math>\forall x \in U: \mu_{A \triangle B}(x) = |\mu_A(x) - \mu_B(x)|,</math>
:or by using a combination of just {{math|max}}, {{math|min}}, and standard negation, giving
::<math>\forall x \in U: \mu_{A \triangle B}(x) = \max(\min(\mu_A(x), 1 - \mu_B(x)), \min(\mu_B(x), 1 - \mu_A(x))).</math><ref name="Vemuri2014" />

:Axioms for definition of generalized symmetric differences analogous to those for t-norms, t-conorms, and negators have been proposed by Vemur et al. (2014) with predecessors by Alsina et al. (2005) and Bedregal et al. (2009).<ref name="Vemuri2014" />

* In contrast to crisp sets, averaging operations can also be defined for fuzzy sets.

===Disjoint fuzzy sets===
In contrast to the general ambiguity of intersection and union operations, there is clearness for disjoint fuzzy sets:
Two fuzzy sets <math>A, B</math> are '''disjoint''' iff
:<math>\forall x \in U: \mu_A(x) = 0 \lor \mu_B(x) = 0</math>
which is equivalent to
:] <math>x \in U: \mu_A(x) > 0 \land \mu_B(x) > 0</math>
and also equivalent to
:<math>\forall x \in U: \min(\mu_A(x),\mu_B(x)) = 0</math>
We keep in mind that {{math|min}}/{{math|max}} is a t/s-norm pair, and any other will work here as well.

Fuzzy sets are disjoint if and only if their supports are ] according to the standard definition for crisp sets.

For disjoint fuzzy sets <math>A, B</math> any intersection will give ∅, and any union will give the same result, which is denoted as
:<math>A \,\dot{\cup}\, B = A \cup B</math>
with its membership function given by
:<math>\forall x \in U: \mu_{A \dot{\cup} B}(x) = \mu_A(x) + \mu_B(x)</math>
Note that only one of both summands is greater than zero.

For disjoint fuzzy sets <math>A, B</math> the following holds true:
:<math>\operatorname{Supp}(A \,\dot{\cup}\, B) = \operatorname{Supp}(A) \cup \operatorname{Supp}(B)</math>

This can be generalized to finite families of fuzzy sets as follows:
Given a family <math>A = (A_i)_{i \in I}</math> of fuzzy sets with index set ''I'' (e.g. ''I'' = {1,2,3,...,''n''}). This family is '''(pairwise) disjoint''' iff
:<math>\text{for all } x \in U \text{ there exists at most one } i \in I \text{ such that } \mu_{A_i}(x) > 0.</math>

A family of fuzzy sets <math>A = (A_i)_{i \in I}</math> is disjoint, iff the family of underlying supports <math>\operatorname{Supp} \circ A = (\operatorname{Supp}(A_i))_{i \in I}</math> is disjoint in the standard sense for families of crisp sets.

Independent of the t/s-norm pair, intersection of a disjoint family of fuzzy sets will give ∅ again, while the union has no ambiguity:
:<math>\dot{\bigcup\limits_{i \in I}}\, A_i = \bigcup_{i \in I} A_i</math>
with its membership function given by
:<math>\forall x \in U: \mu_{\dot{\bigcup\limits_{i \in I}} A_i}(x) = \sum_{i \in I} \mu_{A_i}(x)</math>
Again only one of the summands is greater than zero.

For disjoint families of fuzzy sets <math>A = (A_i)_{i \in I}</math> the following holds true:
:<math>\operatorname{Supp}\left(\dot{\bigcup\limits_{i \in I}}\, A_i\right) = \bigcup\limits_{i \in I} \operatorname{Supp}(A_i)</math>

===Scalar cardinality===
For a fuzzy set <math>A</math> with finite support <math>\operatorname{Supp}(A)</math> (i.e. a "finite fuzzy set"), its '''cardinality''' (aka '''scalar cardinality''' or '''sigma-count''') is given by
:<math>\operatorname{Card}(A) = \operatorname{sc}(A) = |A| = \sum_{x \in U} \mu_A(x)</math>.
In the case that ''U'' itself is a finite set, the '''relative cardinality''' is given by
:<math>\operatorname{RelCard}(A) = \|A\| = \operatorname{sc}(A)/|U| = |A|/|U|</math>.
This can be generalized for the divisor to be a non-empty fuzzy set: For fuzzy sets <math>A,G</math> with ''G'' ≠ ∅, we can define the '''relative cardinality''' by:
:<math>\operatorname{RelCard}(A,G) = \operatorname{sc}(A|G) = \operatorname{sc}(A\cap{G})/\operatorname{sc}(G)</math>,
which looks very similar to the expression for ]<!--and because of that, sc(A|G) is used instead of sc(A/G)- this isn't **set** division, isn't it? -->.
Note:
* <math>\operatorname{sc}(G) > 0</math> here.
* The result may depend on the specific intersection (t-norm) chosen.
* For <math>G = U</math> the result is unambiguous and resembles the prior definition.

===Distance and similarity===
For any fuzzy set <math>A</math> the membership function <math>\mu_A: U \to </math> can be regarded as a family <math>\mu_A = (\mu_A(x))_{x \in U} \in ^U</math>. The latter is a ] with several metrics <math>d</math> known. A metric can be derived from a ] (vector norm) <math>\|\,\|</math> via
:<math>d(\alpha,\beta) = \| \alpha - \beta \|</math>.
For instance, if <math>U</math> is finite, i.e. <math>U = \{x_1, x_2, ... x_n\}</math>, such a metric may be defined by:
:<math>d(\alpha,\beta) := \max \{ |\alpha(x_i) - \beta(x_i)| : i=1, ..., n \}</math> where <math>\alpha</math> and <math>\beta</math> are sequences of real numbers between 0 and 1.
For infinite <math>U</math>, the maximum can be replaced by a supremum.
Because fuzzy sets are unambiguously defined by their membership function, this metric can be used to measure distances between fuzzy sets on the same universe:
:<math>d(A,B) := d(\mu_A,\mu_B)</math>,
which becomes in the above sample:
:<math>d(A,B) = \max \{ |\mu_A(x_i) - \mu_B(x_i)| : i=1,...,n \}</math>.
Again for infinite <math>U</math> the maximum must be replaced by a supremum. Other distances (like the canonical 2-norm) may diverge, if infinite fuzzy sets are too different, e.g., <math>\varnothing</math> and <math>U</math>.

Similarity measures (here denoted by <math>S</math>) may then be derived from the distance, e.g. after a proposal by Koczy:
:<math>S = 1 / (1 + d(A,B))</math> if <math>d(A,B)</math> is finite, <math>0</math> else,
or after Williams and Steele:
:<math>S = \exp(-\alpha{d(A,B)})</math> if <math>d(A,B)</math> is finite, <math>0</math> else
where <math>\alpha > 0</math> is a steepness parameter and <math>\exp(x) = e^x</math>.{{Cn|date=December 2024}}

===''L''-fuzzy sets===
Sometimes, more general variants of the notion of fuzzy set are used, with membership functions taking values in a (fixed or variable) ] or ] <math>L</math> of a given kind; usually it is required that <math>L</math> be at least a ] or ]. These are usually called '''''L''-fuzzy sets''', to distinguish them from those valued over the unit interval. The usual membership functions with values in are then called -valued membership functions. These kinds of generalizations were first considered in 1967 by ], who was a student of Zadeh.<ref>{{cite journal | doi=10.1016/0022-247X(67)90189-8 | title=L-fuzzy sets | date=1967 | last1=Goguen | first1=J.A |author-link=Joseph Goguen | journal=Journal of Mathematical Analysis and Applications | volume=18 | pages=145–174 }}</ref> A classical corollary may be indicating truth and membership values by {f,&thinsp;t} instead of {0,&thinsp;1}.

An extension of fuzzy sets has been provided by ]. An '''intuitionistic fuzzy set''' (IFS) <math>A</math> is characterized by two functions:
:1. <math>\mu_A(x)</math> – degree of membership of ''x''
:2. <math>\nu_A(x)</math> – degree of non-membership of ''x''
with functions <math>\mu_A, \nu_A: U \to </math> with <math>\forall x \in U: \mu_A(x) + \nu_A(x) \le 1</math>.

This resembles a situation like some person denoted by <math>x</math> voting
* for a proposal <math>A</math>: (<math>\mu_A(x)=1, \nu_A(x)=0</math>),
* against it: (<math>\mu_A(x)=0, \nu_A(x)=1</math>),
* or abstain from voting: (<math>\mu_A(x)=\nu_A(x)=0</math>).
After all, we have a percentage of approvals, a percentage of denials, and a percentage of abstentions.

For this situation, special "intuitive fuzzy" negators, t- and s-norms can be defined. With <math>D^* = \{(\alpha,\beta) \in ^2 : \alpha + \beta = 1 \}</math> and by combining both functions to <math>(\mu_A,\nu_A): U \to D^*</math> this situation resembles a special kind of ''L''-fuzzy sets.

Once more, this has been expanded by defining '''picture fuzzy sets''' (PFS) as follows: A PFS A is characterized by three functions mapping ''U'' to : <math>\mu_A, \eta_A, \nu_A</math>, "degree of positive membership", "degree of neutral membership", and "degree of negative membership" respectively and additional condition <math>\forall x \in U: \mu_A(x) + \eta_A(x) + \nu_A(x) \le 1</math>
This expands the voting sample above by an additional possibility of "refusal of voting".

With <math>D^* = \{(\alpha,\beta,\gamma) \in ^3 : \alpha + \beta + \gamma = 1 \}</math> and special "picture fuzzy" negators, t- and s-norms this resembles just another type of ''L''-fuzzy sets.<ref>Bui Cong Cuong, Vladik Kreinovich, Roan Thi Ngan: , in: Departmental Technical Reports (CS). Paper 1047, 2016</ref>

===Pythagorean fuzzy sets===
One extension of IFS is what is known as Pythagorean fuzzy sets. Such sets satisfy the constraint <math>\mu_A(x)^2 + \nu_A(x)^2 \le 1</math>, which is reminiscent of the Pythagorean theorem.<ref>{{Cite book|last=Yager|first=Ronald R. |title=2013 Joint IFSA World Congress and NAFIPS Annual Meeting (IFSA/NAFIPS) |chapter=Pythagorean fuzzy subsets |date=June 2013 |pages=57–61|doi=10.1109/IFSA-NAFIPS.2013.6608375|isbn=978-1-4799-0348-1|s2cid=36286152}}</ref><ref>{{Cite journal|last=Yager|first=Ronald R|date=2013|title=Pythagorean membership grades in multicriteria decision making|journal=IEEE Transactions on Fuzzy Systems|volume=22|issue=4|pages=958–965|doi=10.1109/TFUZZ.2013.2278989|s2cid=37195356}}</ref><ref>{{Cite book|title=Properties and applications of Pythagorean fuzzy sets.|last=Yager|first=Ronald R.|publisher=Springer |location=Cham|date=December 2015|isbn=978-3-319-26302-1|pages=119–136}}</ref> Pythagorean fuzzy sets can be applicable to real life applications in which the previous condition of <math>\mu_A(x) + \nu_A(x) \le 1</math> is not valid. However, the less restrictive condition of <math>\mu_A(x)^2 + \nu_A(x)^2 \le 1</math> may be suitable in more domains.<ref name="CADsurvey">{{cite journal | vauthors = Yanase J, Triantaphyllou E| title = A Systematic Survey of Computer-Aided Diagnosis in Medicine: Past and Present Developments. | journal = Expert Systems with Applications | volume = 138 | pages = 112821 | date = 2019 | doi = 10.1016/j.eswa.2019.112821 | s2cid = 199019309 }}</ref><ref name="SevenChallenges">{{Cite journal|vauthors = Yanase J, Triantaphyllou E|date=2019|title=The Seven Key Challenges for the Future of Computer-Aided Diagnosis in Medicine.|doi=10.1016/j.ijmedinf.2019.06.017|pmid=31445285|journal= International Journal of Medical Informatics|volume=129|pages=413–422|s2cid=198287435 }}</ref>

== Fuzzy logic ==
{{main|Fuzzy logic}}

As an extension of the case of ], valuations (<math>\mu : \mathit{V}_o \to \mathit{W}</math>) of ]s (<math>\mathit{V}_o</math>) into a set of membership degrees (<math>\mathit{W}</math>) can be thought of as ] mapping ] into fuzzy sets (or more formally, into an ordered set of fuzzy pairs, called a fuzzy relation). With these valuations, many-valued logic can be extended to allow for fuzzy ]s from which graded conclusions may be drawn.<ref>], 2001. ''A Treatise on Many-Valued Logics''. Baldock, Hertfordshire, England: Research Studies Press Ltd., {{ISBN|978-0-86380-262-1}}</ref>

This extension is sometimes called "fuzzy logic in the narrow sense" as opposed to "fuzzy logic in the wider sense," which originated in the ] fields of ] control and ], and which encompasses many topics involving fuzzy sets and "approximated reasoning."<ref>{{cite journal | doi=10.1016/0020-0255(75)90036-5 | title=The concept of a linguistic variable and its application to approximate reasoning—I | date=1975 | last1=Zadeh | first1=L.A. | journal=Information Sciences | volume=8 | issue=3 | pages=199–249 }}</ref>


Industrial applications of fuzzy sets in the context of "fuzzy logic in the wider sense" can be found at ]. Industrial applications of fuzzy sets in the context of "fuzzy logic in the wider sense" can be found at ].


=== Fuzzy number === == Fuzzy number ==
{{main|Fuzzy number}}
A '''fuzzy number''' is a ], ] fuzzy set <math>\tilde{\mathit{A}}\subseteq\mathbb{R}</math>
A '''fuzzy number'''<ref name="semanticscholar.org">{{cite journal | doi=10.1016/S0165-0114(99)80004-9 | title=Fuzzy sets as a basis for a theory of possibility | date=1999 | last1=Zadeh | first1=L.A. | journal=Fuzzy Sets and Systems | volume=100 | pages=9–34 }}</ref> is a fuzzy set that satisfies all the following conditions:
whose membership function is at least segmentally ] and has the functional value <math>\mu_{A}(x)=1</math> at precisely one element.
* A is normalised;
This can be likened to the ] game "guess your weight," where someone guesses the contestants weight, with closer guesses being more correct, and where the guesser "wins" if they guess near enough to the contestant's weight, with the actual weight being completely correct (mapping to 1 by the membership function).
* A is a convex set;
* The membership function <math>\mu_{A}(x)</math> achieves the value 1 at least once;
* The membership function <math>\mu_{A}(x)</math> is at least segmentally continuous.


If these conditions are not satisfied, then A is not a '''fuzzy number'''. The core of this fuzzy number is a ]; its location is:
=== Fuzzy interval ===
:: <math> \, C(A) = x^* : \mu_A(x^*)=1</math>
A '''fuzzy interval''' is an uncertain set <math>\tilde{\mathit{A}}\subseteq\mathbb{R}</math> with a mean interval whose elements possess the membership function value <math>\mu_{A}(x)=1</math>. As in fuzzy numbers, the membership function must be ], ], at least segmentally ].


Fuzzy numbers can be likened to the ] game "guess your weight," where someone guesses the contestant's weight, with closer guesses being more correct, and where the guesser "wins" if he or she guesses near enough to the contestant's weight, with the actual weight being completely correct (mapping to 1 by the membership function).
== See also ==

* ]
The kernel <math>K(A) = \operatorname{Kern}(A)</math> of a fuzzy interval <math>A</math> is defined as the 'inner' part, without the 'outbound' parts where the membership value is constant ad infinitum. In other words, the smallest subset of <math>\R</math> where <math>\mu_A(x)</math> is constant outside of it, is defined as the kernel.

However, there are other concepts of fuzzy numbers and intervals as some authors do not insist on convexity.

==Fuzzy categories<!--'Goguen category' rediretcs here-->==
The use of ] as a key component of ] can be generalized to fuzzy sets. This approach, which began in 1968 shortly after the introduction of fuzzy set theory,<ref>J. A. Goguen "Categories of fuzzy sets: applications of non-Cantorian set theory" PhD Thesis University of California, Berkeley, 1968</ref> led to the development of '''Goguen categories'''<!--boldface per WP:R#PLA--> in the 21st century.<ref>Michael Winter "Goguen Categories:A Categorical Approach to L-fuzzy Relations" 2007 ] {{ISBN|9781402061639}}</ref><ref name=goguencateg>{{cite journal | doi=10.1016/S0165-0114(02)00508-0 | title=Representation theory of Goguen categories | date=2003 | last1=Winter | first1=Michael | journal=Fuzzy Sets and Systems | volume=138 | pages=85–126 }}</ref> In these categories, rather than using two valued set membership, more general intervals are used, and may be lattices as in ''L''-fuzzy sets.<ref name=goguencateg/><ref>{{cite journal | doi=10.1016/0022-247X(67)90189-8 | title=L-fuzzy sets | date=1967 | last1=Goguen | first1=J.A | journal=Journal of Mathematical Analysis and Applications | volume=18 | pages=145–174 }}</ref>

There are numerous mathematical extensions similar to or more general than fuzzy sets. Since fuzzy sets were introduced in 1965 by Zadeh, many new mathematical constructions and theories treating imprecision, inaccuracy, vagueness, uncertainty and vulnerability have been developed. Some of these constructions and theories are extensions of fuzzy set theory, while others attempt to mathematically model inaccuracy/vagueness and uncertainty in a different way.

* Fuzzy Sets (Zadeh, 1965)
* interval sets (Moore, 1966),
* L-fuzzy sets (Goguen, 1967),
* flou sets (Gentilhomme, 1968),
* type-2 fuzzy sets and type-n fuzzy sets (Zadeh, 1975),
* interval-valued fuzzy sets (Grattan-Guinness, 1975; Jahn, 1975; Sambuc, 1975; Zadeh, 1975),
* level fuzzy sets (Radecki, 1977)
* rough sets (Pawlak, 1982),
* intuitionistic fuzzy sets (Atanassov, 1983),
* fuzzy multisets (Yager, 1986),
* intuitionistic L-fuzzy sets (Atanassov, 1986),
* rough multisets (Grzymala-Busse, 1987),
* fuzzy rough sets (Nakamura, 1988),
* real-valued fuzzy sets (Blizard, 1989),
* vague sets (Wen-Lung Gau and Buehrer, 1993),
* α-level sets (Yao, 1997),
* shadowed sets (Pedrycz, 1998),
* neutrosophic sets (NSs) (Smarandache, 1998),
* bipolar fuzzy sets (Wen-Ran Zhang, 1998),
* genuine sets (Demirci, 1999),
* soft sets (Molodtsov, 1999),
* complex fuzzy set (2002),
* intuitionistic fuzzy rough sets (Cornelis, De Cock and Kerre, 2003)
* L-fuzzy rough sets (Radzikowska and Kerre, 2004),
* multi-fuzzy sets (Sabu Sebastian, 2009),
* generalized rough fuzzy sets (Feng, 2010)
* rough intuitionistic fuzzy sets (Thomas and Nair, 2011),
* soft rough fuzzy sets (Meng, Zhang and Qin, 2011)
* soft fuzzy rough sets (Meng, Zhang and Qin, 2011)
* soft multisets (Alkhazaleh, Salleh and Hassan, 2011)
* fuzzy soft multisets (Alkhazaleh and Salleh, 2012)
* pythagorean fuzzy set (Yager , 2013),
* picture fuzzy set (Cuong, 2013),
* spherical fuzzy set (Mahmood, 2018).

Although applications of fuzzy sets theory and its extension are vast in our real life problem, there is a single book which covers all the extensions of fuzzy set theory. This single book which covers all the extensions of fuzzy sets from the last 54 years. This book can be used both as a reference book as well as a text-book for a variety of courses. Book name is “".

== Fuzzy relation equation ==
{{More citations needed section|date=November 2015}}
The ] is an equation of the form {{nowrap|1=''A'' · ''R'' = ''B''}}, where ''A'' and ''B'' are fuzzy sets, ''R'' is a fuzzy relation, and {{nowrap|''A'' · ''R''}} stands for the ] of ''A'' with&nbsp;''R'' {{Citation needed|date=September 2017}}.

==Entropy==
A measure ''d'' of fuzziness for fuzzy sets of universe <math>U</math> should fulfill the following conditions for all <math>x \in U</math>:
#<math>d(A) = 0</math> if <math>A</math> is a crisp set: <math>\mu_A(x) \in \{0,\,1\}</math>
#<math>d(A)</math> has a unique maximum iff <math>\forall x \in U: \mu_A(x) = 0.5</math>
#<math>\mu_A \leq \mu_B \iff</math>
:::<math>\mu_A \leq \mu_B \leq 0.5</math>
:::<math>\mu_A \geq \mu_B \geq 0.5</math>
::which means that ''B'' is "crisper" than ''A''.
#<math>d(\neg{A}) = d(A)</math>
In this case <math>d(A)</math> is called the '''entropy''' of the fuzzy set ''A''.

For '''finite''' <math>U = \{x_1, x_2, ... x_n\}</math> the entropy of a fuzzy set <math>A</math> is given by
:<math>d(A) = H(A) + H(\neg{A})</math>,
::<math>H(A) = -k \sum_{i=1}^n \mu_A(x_i) \ln \mu_A(x_i)</math>
or just
:<math>d(A) = -k \sum_{i=1}^n S(\mu_A(x_i))</math>
where <math>S(x) = H_e(x)</math> is ] (natural entropy function)
:<math>S(\alpha) = -\alpha \ln \alpha - (1-\alpha) \ln (1-\alpha),\ \alpha \in </math>
and <math>k</math> is a constant depending on the measure unit and the logarithm base used (here we have used the natural base ]).
The physical interpretation of ''k'' is the ] ''k''<sup>''B''</sup>.

Let <math>A</math> be a fuzzy set with a '''continuous''' membership function (fuzzy variable). Then
:<math>H(A) = -k \int_{- \infty}^\infty \operatorname{Cr} \lbrace A \geq t \rbrace \ln \operatorname{Cr} \lbrace A \geq t \rbrace \,dt</math>
and its entropy is
:<math>d(A) = -k \int_{- \infty}^\infty S(\operatorname{Cr} \lbrace A \geq t \rbrace )\,dt.</math><ref>{{cite journal|doi=10.1016/0165-0114(92)90239-Z|title=Entropy, distance measure and similarity measure of fuzzy sets and their relations|journal=Fuzzy Sets and Systems|volume=52|issue=3|pages=305–318|year=1992|last1=Xuecheng|first1=Liu}}</ref><ref>{{cite journal|doi=10.1186/s40467-015-0029-5|title=Fuzzy cross-entropy|journal=Journal of Uncertainty Analysis and Applications|volume=3|year=2015|last1=Li|first1=Xiang|doi-access=free}}</ref>

==Extensions==
There are many mathematical constructions similar to or more general than fuzzy sets. Since fuzzy sets were introduced in 1965, many new mathematical constructions and theories treating imprecision, inexactness, ambiguity, and uncertainty have been developed. Some of these constructions and theories are extensions of fuzzy set theory, while others try to mathematically model imprecision and uncertainty in a different way.<ref>
{{harvnb|Burgin|Chunihin|1997}}; {{harvnb|Kerre|2001}}; {{harvnb|Deschrijver|Kerre|2003}}.</ref>

==See also==
{{div col|colwidth=25em}}
* ] * ]
* ] * ]
* ] * ]
* ]
* ] * ]
* ]
* ]
* ]
* ]
* ] * ]
* ]
* ] * ]
* ]
* ]
* ] * ]
{{div col end}}
* ]
* ]


==External links== == References ==
{{reflist}}


{{refbegin|}}
*
== Bibliography ==
*
* {{cite journal |doi=10.1155/2012/350603 |title=Fuzzy Soft Multiset Theory |date=2012 |last1=Alkhazaleh |first1=Shawkat |last2=Salleh |first2=Abdul Razak |journal=Abstract and Applied Analysis |doi-access=free }}
*
* ] (1983) , VII ITKR's Session, Sofia (deposited in Central Sci.-Technical Library of Bulg. Acad. of Sci., 1697/84) (in Bulgarian)
* {{cite journal |doi=10.1016/S0165-0114(86)80034-3 |title=Intuitionistic fuzzy sets |date=1986 |last1=Atanassov |first1=Krassimir T. |journal=Fuzzy Sets and Systems |volume=20 |pages=87–96 }}
* {{cite journal|last=Bezdek|first=J.C.|date=1978|title=Fuzzy partitions and relations and axiomatic basis for clustering|journal=Fuzzy Sets and Systems|volume=1|issue=2|pages=111–127|doi=10.1016/0165-0114(78)90012-X}}
* {{cite journal |doi=10.1016/0165-0114(89)90218-2 |title=Real-valued multisets and fuzzy sets |date=1989 |last1=Blizard |first1=Wayne D. |journal=Fuzzy Sets and Systems |volume=33 |pages=77–97 }}
* {{cite journal |doi=10.1016/S0019-9958(71)90288-9 |title=A note on fuzzy sets |date=1971 |last1=Brown |first1=Joseph G. |journal=Information and Control |volume=18 |pages=32–39 }}
* Brutoczki Kornelia: (Diploma) – <small>Although this script has many oddities and intricacies due to its incompleteness, it may be used a template for exercise in removing these issues.</small>
* Burgin, M. Theory of Named Sets as a Foundational Basis for Mathematics, in Structures in Mathematical Theories, San Sebastian, 1990, pp.&nbsp; 417–420
* {{cite journal |last1=Burgin |first1=M. |last2=Chunihin |first2=A. |date=1997 |title=Named Sets in the Analysis of Uncertainty |journal=Methodological and Theoretical Problems of Mathematics and Information Sciences |location=Kiev |pages=72–85}}
* {{cite book |doi=10.1007/3-540-45813-1_10 |chapter=Heyting Wajsberg Algebras as an Abstract Environment Linking Fuzzy and Rough Sets |title=Rough Sets and Current Trends in Computing |series=Lecture Notes in Computer Science |date=2002 |last1=Cattaneo |first1=Gianpiero |last2=Ciucci |first2=Davide |volume=2475 |pages=77–84 |isbn=978-3-540-44274-5 }}
* {{cite journal |doi=10.1016/j.fss.2013.05.009 |title=A discussion on fuzzy cardinality and quantification. Some applications in image processing |date=2014 |last1=Chamorro-Martínez |first1=J. |last2=Sánchez |first2=D. |last3=Soto-Hidalgo |first3=J.M. |last4=Martínez-Jiménez |first4=P.M. |journal=Fuzzy Sets and Systems |volume=257 |pages=85–101 }}
* Chapin, E.W. (1974) Set-valued Set Theory, I, Notre Dame J. Formal Logic, v. 15, pp.&nbsp;619–634
* Chapin, E.W. (1975) Set-valued Set Theory, II, Notre Dame J. Formal Logic, v. 16, pp.&nbsp;255–267
* {{cite journal |doi=10.1111/1468-0394.00250 |title=Intuitionistic fuzzy rough sets: At the crossroads of imperfect knowledge |date=2003 |last1=Cornelis |first1=Chris |last2=De Cock |first2=Martine |last3=Kerre |first3=Etienne E. |journal=Expert Systems |volume=20 |issue=5 |pages=260–270 |s2cid=15031773 }}
* {{cite journal |doi=10.1016/S0888-613X(03)00072-0 |title=Implication in intuitionistic fuzzy and interval-valued fuzzy set theory: Construction, classification, application |date=2004 |last1=Cornelis |first1=Chris |last2=Deschrijver |first2=Glad |last3=Kerre |first3=Etienne E. |journal=International Journal of Approximate Reasoning |volume=35 |pages=55–95 }}
* {{cite conference|first1=Martine|last1=De Cock|first2=Ulrich|last2=Bodenhofer|first3=Etienne E.|last3=Kerre|title=Modelling Linguistic Expressions Using Fuzzy Relations|date=1–4 October 2000|conference=Proceedings of the 6th International Conference on Soft Computing|location=Iizuka, Japan|pages=353–360|citeseerx=10.1.1.32.8117}}
* {{cite journal |doi=10.1016/S0165-0114(97)00235-2 |title=Genuine sets |date=1999 |last1=Demirci |first1=Mustafa |journal=Fuzzy Sets and Systems |volume=105 |issue=3 |pages=377–384 }}
* {{cite journal|last1=Deschrijver|first1=G.|last2=Kerre|first2=E.E.|title=On the relationship between some extensions of fuzzy set theory|journal=Fuzzy Sets and Systems|volume=133|issue=2|pages=227–235|date=2003|doi=10.1016/S0165-0114(02)00127-6}}
* {{cite book|editor=Didier Dubois, Henri M. Prade|title=Fundamentals of fuzzy sets|year=2000|publisher=Springer|isbn=978-0-7923-7732-0|series=The Handbooks of Fuzzy Sets Series|volume=7}}
* {{cite book |doi=10.1109/IWISA.2009.5072885 |chapter=Generalized Rough Fuzzy Sets Based on Soft Sets |title=2009 International Workshop on Intelligent Systems and Applications |date=2009 |last1=Feng |first1=Feng |pages=1–4 |isbn=978-1-4244-3893-8 }}
* Gentilhomme, Y. (1968) Les ensembles flous en linguistique, Cahiers de Linguistique Théorique et Appliquée, 5, pp.&nbsp;47–63
* {{cite journal |doi=10.1016/0022-247X(67)90189-8 |title=L-fuzzy sets |date=1967 |last1=Goguen |first1=J.A |journal=Journal of Mathematical Analysis and Applications |volume=18 |pages=145–174 }}
* {{Cite journal|last1=Gottwald|first1=S.|title=Universes of Fuzzy Sets and Axiomatizations of Fuzzy Set Theory. Part I: Model-Based and Axiomatic Approaches|doi=10.1007/s11225-006-7197-8|journal=Studia Logica|volume=82|issue=2|pages=211–244|year=2006|s2cid=11931230}}. {{Cite journal|last1=Gottwald|first1=S.|doi=10.1007/s11225-006-9001-1|title=Universes of Fuzzy Sets and Axiomatizations of Fuzzy Set Theory. Part II: Category Theoretic Approaches|journal=Studia Logica|volume=84|pages=23–50|year=2006|s2cid=10453751}} ..
* Grattan-Guinness, I. (1975) Fuzzy membership mapped onto interval and many-valued quantities. Z. Math. Logik. Grundladen Math. 22, pp.&nbsp;149–160.
* Grzymala-Busse, J. Learning from examples based on rough multisets, in Proceedings of the 2nd International Symposium on Methodologies for Intelligent Systems, Charlotte, NC, USA, 1987, pp.&nbsp;325–332
* Gylys, R. P. (1994) Quantal sets and sheaves over quantales, Liet. Matem. Rink., v. 34, No. 1, pp.&nbsp;9–31.
* {{cite book|editor=Ulrich Höhle, Stephen Ernest Rodabaugh|title=Mathematics of fuzzy sets: logic, topology, and measure theory|year=1999|publisher=Springer|isbn=978-0-7923-8388-8|series=The Handbooks of Fuzzy Sets Series|volume=3}}
* {{cite journal |doi=10.1002/MANA.19750680109 |title=Intervall-wertige Mengen |date=1975 |last1=Jahn |first1=K.-U. |journal=Mathematische Nachrichten |volume=68 |pages=115–132 }}
* ]. ''Introduction to the theory of fuzzy subsets.'' Vol. 2. Academic Press, 1975.
* {{Cite book|last=Kerre|first=E.E.|chapter=A First View on the Alternatives of Fuzzy Set Theory |title=Computational Intelligence in Theory and Practice|editor1=B. Reusch|editor2=K-H. Temme|publisher=Physica-Verlag|location=Heidelberg|isbn=978-3-7908-1357-9|date=2001|pages=55–72|doi=10.1007/978-3-7908-1831-4_4}}
* {{cite book|author1=George J. Klir|author2=Bo Yuan|title=Fuzzy sets and fuzzy logic: theory and applications|year=1995|publisher=Prentice Hall|isbn=978-0-13-101171-7}}
* {{cite news|last=Kuzmin|first=V.B.|title=Building Group Decisions in Spaces of Strict and Fuzzy Binary Relations|location=Nauka, Moscow|date=1982|language=ru}}
* {{cite journal |doi=10.1112/jlms/s2-12.3.323 |title=Sets, Fuzzy Sets, Multisets and Functions |date=1976 |last1=Lake |first1=John |journal=Journal of the London Mathematical Society |issue=3 |pages=323–326 }}
* {{cite journal |doi=10.1016/j.camwa.2011.10.049 |title=Soft rough fuzzy sets and soft fuzzy rough sets |date=2011 |last1=Meng |first1=Dan |last2=Zhang |first2=Xiaohong |last3=Qin |first3=Keyun |journal=Computers & Mathematics with Applications |volume=62 |issue=12 |pages=4635–4645 }}
* {{cite book |doi=10.1007/3-540-45523-X_11 |chapter=Fuzzy Multisets and Their Generalizations |title=Multiset Processing |series=Lecture Notes in Computer Science |date=2001 |last1=Miyamoto |first1=Sadaaki |volume=2235 |pages=225–235 |isbn=978-3-540-43063-6 }}
* {{cite journal |doi=10.1016/S0898-1221(99)00056-5 |title=Soft set theory—First results |date=1999 |last1=Molodtsov |first1=D. |journal=Computers & Mathematics with Applications |volume=37 |issue=4–5 |pages=19–31 }}
* Moore, R.E. Interval Analysis, New York, Prentice-Hall, 1966
* Nakamura, A. (1988) Fuzzy rough sets, 'Notes on Multiple-valued Logic in Japan', v. 9, pp.&nbsp;1–8
* Narinyani, A.S. Underdetermined Sets – A new datatype for knowledge representation, Preprint 232, Project VOSTOK, issue 4, Novosibirsk, Computing Center, USSR Academy of Sciences, 1980
* {{cite journal |doi=10.1109/3477.658584 |title=Shadowed sets: Representing and processing fuzzy sets |date=1998 |last1=Pedrycz |first1=W. |journal=IEEE Transactions on Systems, Man and Cybernetics, Part B (Cybernetics) |volume=28 |issue=1 |pages=103–109 |pmid=18255928 }}
* {{cite journal |doi= 10.1080/01969727708927558|title= Level Fuzzy Sets|date= 1977|last1= Radecki|first1= Tadeusz|journal= Journal of Cybernetics|volume= 7|issue= 3–4|pages= 189–198}}
* {{cite book |doi=10.1007/978-3-540-24844-6_78 |chapter=On L–Fuzzy Rough Sets |title=Artificial Intelligence and Soft Computing - ICAISC 2004 |series=Lecture Notes in Computer Science |date=2004 |last1=Radzikowska |first1=Anna Maria |last2=Kerre |first2=Etienne E. |volume=3070 |pages=526–531 |isbn=978-3-540-22123-4 }}
* {{cite journal|last=Salii|first=V.N.|date=1965|url=http://www.mathnet.ru/links/3c2c5808bf86871be61c7003d1efad97/ivm2487.pdf|title=Binary L-relations|journal=Izv. Vysh. Uchebn. Zaved. Matematika|volume=44|issue=1|pages=133–145|language=ru}}
* Ramakrishnan, T.V., and Sabu Sebastian (2010) '', Int. J. Appl. Math. 23, 713–721.
* Sabu Sebastian and Ramakrishnan, T. V.(2010) '', Int. Math. Forum 50, 2471–2476.
* {{cite journal |doi=10.1007/s12543-011-0064-y |title=Multi-fuzzy Sets: An Extension of Fuzzy Sets |date=2011 |last1=Sebastian |first1=Sabu |last2=Ramakrishnan |first2=T.V. |journal=Fuzzy Information and Engineering |volume=3 |pages=35–43 |doi-access=free }}
* {{cite journal |doi=10.1142/S1793536911000714 |title=Multi-Fuzzy Extensions of Functions |date=2011 |last1=Sebastian |first1=Sabu |last2=Ramakrishnan |first2=T. V. |journal=Advances in Adaptive Data Analysis |volume=03 |issue=3 |pages=339–350 }}
* Sabu Sebastian and Ramakrishnan, T. V.(2011) , Ann. Fuzzy Math. Inform. 2 (1), 1–8
* Sambuc, R. Fonctions φ-floues: Application à l'aide au diagnostic en pathologie thyroidienne, Ph.D. Thesis Univ. Marseille, France, 1975.
* Seising, Rudolf: (Studies in Fuzziness and Soft Computing, Vol. 216) Berlin, New York, : Springer 2007.
* {{cite journal |doi=10.1023/B:LOGI.0000021717.26376.3f |title=Vagueness and Blurry Sets |date=2004 |last1=Smith |first1=Nicholas J. J. |journal=Journal of Philosophical Logic |volume=33 |issue=2 |pages=165–235 }}
* Werro, Nicolas: {{Webarchive|url=https://web.archive.org/web/20171201031632/https://diuf.unifr.ch/main/is/sites/diuf.unifr.ch.main.is/files/documents/publications/WerroN.pdf |date=2017-12-01 }}, University of Fribourg, Switzerland, 2008,
* {{cite journal |doi=10.1080/03081078608934952 |title=On the Theory of Bags |date=1986 |last1=Yager |first1=Ronald R. |journal=International Journal of General Systems |volume=13 |pages=23–37 }}
* Yao, Y.Y., Combination of rough and fuzzy sets based on α-level sets, in: Rough Sets and Data Mining: Analysis for Imprecise Data, Lin, T.Y. and Cercone, N. (Eds.), Kluwer Academic Publishers, Boston, pp.&nbsp;301–321, 1997.
* {{cite journal |doi=10.1016/S0020-0255(98)10023-3 |title=A comparative study of fuzzy sets and rough sets |date=1998 |last1=Yao |first1=Y. |journal=Information Sciences |volume=109 |issue=1–4 |pages=227–242 }}
* {{cite journal |doi=10.1016/0020-0255(75)90036-5 |title=The concept of a linguistic variable and its application to approximate reasoning—I |date=1975 |last1=Zadeh |first1=L.A. |journal=Information Sciences |volume=8 |issue=3 |pages=199–249 }}
* {{cite book|author=Hans-Jürgen Zimmermann|title=Fuzzy set theory—and its applications|year=2001|publisher=Kluwer|isbn=978-0-7923-7435-0|edition=4th}}
{{refend}}


{{Non-classical logic}}
==References==
{{Set theory}}

* ], 1967, "''L''-fuzzy sets". ''Journal of Mathematical Analysis and Applications'' '''18''': 145–174
* Gottwald, Siegfried, 2001. ''A Treatise on Many-Valued Logics''. Baldock, Hertfordshire, England: Research Studies Press Ltd.
* ], 1965, "Fuzzy sets," ''Information and Control'' '''8''': 338–353.
* --------, 1975, "The concept of a linguistic variable and its application to approximate reasoning," ''Information Sciences'' '''8''': 199&ndash;249, 301&ndash;57; ''9'': 43&ndash;80.
* --------, 1978, "Fuzzy sets as a basis for a theory of possibility," ''Fuzzy Sets and Systems'' '''1''': 3&ndash;28.


{{DEFAULTSORT:Fuzzy Set}}
] ]
] ]

]
]
]
]
]
]
]
]
]
]

Latest revision as of 11:58, 15 January 2025

Sets whose elements have degrees of membership

In mathematics, fuzzy sets (also known as uncertain sets) are sets whose elements have degrees of membership. Fuzzy sets were introduced independently by Lotfi A. Zadeh in 1965 as an extension of the classical notion of set. At the same time, Salii (1965) defined a more general kind of structure called an "L-relation", which he studied in an abstract algebraic context; fuzzy relations are special cases of L-relations when L is the unit interval . They are now used throughout fuzzy mathematics, having applications in areas such as linguistics (De Cock, Bodenhofer & Kerre 2000), decision-making (Kuzmin 1982), and clustering (Bezdek 1978).

In classical set theory, the membership of elements in a set is assessed in binary terms according to a bivalent condition—an element either belongs or does not belong to the set. By contrast, fuzzy set theory permits the gradual assessment of the membership of elements in a set; this is described with the aid of a membership function valued in the real unit interval . Fuzzy sets generalize classical sets, since the indicator functions (aka characteristic functions) of classical sets are special cases of the membership functions of fuzzy sets, if the latter only takes values 0 or 1. In fuzzy set theory, classical bivalent sets are usually called crisp sets. The fuzzy set theory can be used in a wide range of domains in which information is incomplete or imprecise, such as bioinformatics.

Definition

A fuzzy set is a pair ( U , m ) {\displaystyle (U,m)} where U {\displaystyle U} is a set (often required to be non-empty) and m : U [ 0 , 1 ] {\displaystyle m\colon U\rightarrow } a membership function. The reference set U {\displaystyle U} (sometimes denoted by Ω {\displaystyle \Omega } or X {\displaystyle X} ) is called universe of discourse, and for each x U , {\displaystyle x\in U,} the value m ( x ) {\displaystyle m(x)} is called the grade of membership of x {\displaystyle x} in ( U , m ) {\displaystyle (U,m)} . The function m = μ A {\displaystyle m=\mu _{A}} is called the membership function of the fuzzy set A = ( U , m ) {\displaystyle A=(U,m)} .

For a finite set U = { x 1 , , x n } , {\displaystyle U=\{x_{1},\dots ,x_{n}\},} the fuzzy set ( U , m ) {\displaystyle (U,m)} is often denoted by { m ( x 1 ) / x 1 , , m ( x n ) / x n } . {\displaystyle \{m(x_{1})/x_{1},\dots ,m(x_{n})/x_{n}\}.}

Let x U {\displaystyle x\in U} . Then x {\displaystyle x} is called

  • not included in the fuzzy set ( U , m ) {\displaystyle (U,m)} if m ( x ) = 0 {\displaystyle m(x)=0} (no member),
  • fully included if m ( x ) = 1 {\displaystyle m(x)=1} (full member),
  • partially included if 0 < m ( x ) < 1 {\displaystyle 0<m(x)<1} (fuzzy member).

The (crisp) set of all fuzzy sets on a universe U {\displaystyle U} is denoted with S F ( U ) {\displaystyle SF(U)} (or sometimes just F ( U ) {\displaystyle F(U)} ).

Crisp sets related to a fuzzy set

For any fuzzy set A = ( U , m ) {\displaystyle A=(U,m)} and α [ 0 , 1 ] {\displaystyle \alpha \in } the following crisp sets are defined:

  • A α = A α = { x U m ( x ) α } {\displaystyle A^{\geq \alpha }=A_{\alpha }=\{x\in U\mid m(x)\geq \alpha \}} is called its α-cut (aka α-level set)
  • A > α = A α = { x U m ( x ) > α } {\displaystyle A^{>\alpha }=A'_{\alpha }=\{x\in U\mid m(x)>\alpha \}} is called its strong α-cut (aka strong α-level set)
  • S ( A ) = Supp ( A ) = A > 0 = { x U m ( x ) > 0 } {\displaystyle S(A)=\operatorname {Supp} (A)=A^{>0}=\{x\in U\mid m(x)>0\}} is called its support
  • C ( A ) = Core ( A ) = A = 1 = { x U m ( x ) = 1 } {\displaystyle C(A)=\operatorname {Core} (A)=A^{=1}=\{x\in U\mid m(x)=1\}} is called its core (or sometimes kernel Kern ( A ) {\displaystyle \operatorname {Kern} (A)} ).

Note that some authors understand "kernel" in a different way; see below.

Other definitions

  • A fuzzy set A = ( U , m ) {\displaystyle A=(U,m)} is empty ( A = {\displaystyle A=\varnothing } ) iff (if and only if)
{\displaystyle \forall } x U : μ A ( x ) = m ( x ) = 0 {\displaystyle x\in U:\mu _{A}(x)=m(x)=0}
  • Two fuzzy sets A {\displaystyle A} and B {\displaystyle B} are equal ( A = B {\displaystyle A=B} ) iff
x U : μ A ( x ) = μ B ( x ) {\displaystyle \forall x\in U:\mu _{A}(x)=\mu _{B}(x)}
  • A fuzzy set A {\displaystyle A} is included in a fuzzy set B {\displaystyle B} ( A B {\displaystyle A\subseteq B} ) iff
x U : μ A ( x ) μ B ( x ) {\displaystyle \forall x\in U:\mu _{A}(x)\leq \mu _{B}(x)}
  • For any fuzzy set A {\displaystyle A} , any element x U {\displaystyle x\in U} that satisfies
μ A ( x ) = 0.5 {\displaystyle \mu _{A}(x)=0.5}
is called a crossover point.
  • Given a fuzzy set A {\displaystyle A} , any α [ 0 , 1 ] {\displaystyle \alpha \in } , for which A = α = { x U μ A ( x ) = α } {\displaystyle A^{=\alpha }=\{x\in U\mid \mu _{A}(x)=\alpha \}} is not empty, is called a level of A.
  • The level set of A is the set of all levels α [ 0 , 1 ] {\displaystyle \alpha \in } representing distinct cuts. It is the image of μ A {\displaystyle \mu _{A}} :
Λ A = { α [ 0 , 1 ] : A = α } = { α [ 0 , 1 ] : {\displaystyle \Lambda _{A}=\{\alpha \in :A^{=\alpha }\neq \varnothing \}=\{\alpha \in :{}} {\displaystyle \exists } x U ( μ A ( x ) = α ) } = μ A ( U ) {\displaystyle x\in U(\mu _{A}(x)=\alpha )\}=\mu _{A}(U)}
  • For a fuzzy set A {\displaystyle A} , its height is given by
Hgt ( A ) = sup { μ A ( x ) x U } = sup ( μ A ( U ) ) {\displaystyle \operatorname {Hgt} (A)=\sup\{\mu _{A}(x)\mid x\in U\}=\sup(\mu _{A}(U))}
where sup {\displaystyle \sup } denotes the supremum, which exists because μ A ( U ) {\displaystyle \mu _{A}(U)} is non-empty and bounded above by 1. If U is finite, we can simply replace the supremum by the maximum.
  • A fuzzy set A {\displaystyle A} is said to be normalized iff
Hgt ( A ) = 1 {\displaystyle \operatorname {Hgt} (A)=1}
In the finite case, where the supremum is a maximum, this means that at least one element of the fuzzy set has full membership. A non-empty fuzzy set A {\displaystyle A} may be normalized with result A ~ {\displaystyle {\tilde {A}}} by dividing the membership function of the fuzzy set by its height:
x U : μ A ~ ( x ) = μ A ( x ) / Hgt ( A ) {\displaystyle \forall x\in U:\mu _{\tilde {A}}(x)=\mu _{A}(x)/\operatorname {Hgt} (A)}
Besides similarities this differs from the usual normalization in that the normalizing constant is not a sum.
  • For fuzzy sets A {\displaystyle A} of real numbers ( U R ) {\displaystyle (U\subseteq \mathbb {R} )} with bounded support, the width is defined as
Width ( A ) = sup ( Supp ( A ) ) inf ( Supp ( A ) ) {\displaystyle \operatorname {Width} (A)=\sup(\operatorname {Supp} (A))-\inf(\operatorname {Supp} (A))}
In the case when Supp ( A ) {\displaystyle \operatorname {Supp} (A)} is a finite set, or more generally a closed set, the width is just
Width ( A ) = max ( Supp ( A ) ) min ( Supp ( A ) ) {\displaystyle \operatorname {Width} (A)=\max(\operatorname {Supp} (A))-\min(\operatorname {Supp} (A))}
In the n-dimensional case ( U R n ) {\displaystyle (U\subseteq \mathbb {R} ^{n})} the above can be replaced by the n-dimensional volume of Supp ( A ) {\displaystyle \operatorname {Supp} (A)} .
In general, this can be defined given any measure on U, for instance by integration (e.g. Lebesgue integration) of Supp ( A ) {\displaystyle \operatorname {Supp} (A)} .
  • A real fuzzy set A ( U R ) {\displaystyle A(U\subseteq \mathbb {R} )} is said to be convex (in the fuzzy sense, not to be confused with a crisp convex set), iff
x , y U , λ [ 0 , 1 ] : μ A ( λ x + ( 1 λ ) y ) min ( μ A ( x ) , μ A ( y ) ) {\displaystyle \forall x,y\in U,\forall \lambda \in :\mu _{A}(\lambda {x}+(1-\lambda )y)\geq \min(\mu _{A}(x),\mu _{A}(y))} .
Without loss of generality, we may take xy, which gives the equivalent formulation
z [ x , y ] : μ A ( z ) min ( μ A ( x ) , μ A ( y ) ) {\displaystyle \forall z\in :\mu _{A}(z)\geq \min(\mu _{A}(x),\mu _{A}(y))} .
This definition can be extended to one for a general topological space U: we say the fuzzy set A {\displaystyle A} is convex when, for any subset Z of U, the condition
z Z : μ A ( z ) inf ( μ A ( Z ) ) {\displaystyle \forall z\in Z:\mu _{A}(z)\geq \inf(\mu _{A}(\partial Z))}
holds, where Z {\displaystyle \partial Z} denotes the boundary of Z and f ( X ) = { f ( x ) x X } {\displaystyle f(X)=\{f(x)\mid x\in X\}} denotes the image of a set X (here Z {\displaystyle \partial Z} ) under a function f (here μ A {\displaystyle \mu _{A}} ).

Fuzzy set operations

Main article: Fuzzy set operations

Although the complement of a fuzzy set has a single most common definition, the other main operations, union and intersection, do have some ambiguity.

  • For a given fuzzy set A {\displaystyle A} , its complement ¬ A {\displaystyle \neg {A}} (sometimes denoted as A c {\displaystyle A^{c}} or c A {\displaystyle cA} ) is defined by the following membership function:
x U : μ ¬ A ( x ) = 1 μ A ( x ) {\displaystyle \forall x\in U:\mu _{\neg {A}}(x)=1-\mu _{A}(x)} .
  • Let t be a t-norm, and s the corresponding s-norm (aka t-conorm). Given a pair of fuzzy sets A , B {\displaystyle A,B} , their intersection A B {\displaystyle A\cap {B}} is defined by:
x U : μ A B ( x ) = t ( μ A ( x ) , μ B ( x ) ) {\displaystyle \forall x\in U:\mu _{A\cap {B}}(x)=t(\mu _{A}(x),\mu _{B}(x))} ,
and their union A B {\displaystyle A\cup {B}} is defined by:
x U : μ A B ( x ) = s ( μ A ( x ) , μ B ( x ) ) {\displaystyle \forall x\in U:\mu _{A\cup {B}}(x)=s(\mu _{A}(x),\mu _{B}(x))} .

By the definition of the t-norm, we see that the union and intersection are commutative, monotonic, associative, and have both a null and an identity element. For the intersection, these are ∅ and U, respectively, while for the union, these are reversed. However, the union of a fuzzy set and its complement may not result in the full universe U, and the intersection of them may not give the empty set ∅. Since the intersection and union are associative, it is natural to define the intersection and union of a finite family of fuzzy sets recursively. It is noteworthy that the generally accepted standard operators for the union and intersection of fuzzy sets are the max and min operators:

  • x U : μ A B ( x ) = max ( μ A ( x ) , μ B ( x ) ) {\displaystyle \forall x\in U:\mu _{A\cup {B}}(x)=\max(\mu _{A}(x),\mu _{B}(x))} and μ A B ( x ) = min ( μ A ( x ) , μ B ( x ) ) {\displaystyle \mu _{A\cap {B}}(x)=\min(\mu _{A}(x),\mu _{B}(x))} .
  • If the standard negator n ( α ) = 1 α , α [ 0 , 1 ] {\displaystyle n(\alpha )=1-\alpha ,\alpha \in } is replaced by another strong negator, the fuzzy set difference may be generalized by
x U : μ ¬ A ( x ) = n ( μ A ( x ) ) . {\displaystyle \forall x\in U:\mu _{\neg {A}}(x)=n(\mu _{A}(x)).}
  • The triple of fuzzy intersection, union and complement form a De Morgan Triplet. That is, De Morgan's laws extend to this triple.
Examples for fuzzy intersection/union pairs with standard negator can be derived from samples provided in the article about t-norms.
The fuzzy intersection is not idempotent in general, because the standard t-norm min is the only one which has this property. Indeed, if the arithmetic multiplication is used as the t-norm, the resulting fuzzy intersection operation is not idempotent. That is, iteratively taking the intersection of a fuzzy set with itself is not trivial. It instead defines the m-th power of a fuzzy set, which can be canonically generalized for non-integer exponents in the following way:
  • For any fuzzy set A {\displaystyle A} and ν R + {\displaystyle \nu \in \mathbb {R} ^{+}} the ν-th power of A {\displaystyle A} is defined by the membership function:
x U : μ A ν ( x ) = μ A ( x ) ν . {\displaystyle \forall x\in U:\mu _{A^{\nu }}(x)=\mu _{A}(x)^{\nu }.}

The case of exponent two is special enough to be given a name.

  • For any fuzzy set A {\displaystyle A} the concentration C O N ( A ) = A 2 {\displaystyle CON(A)=A^{2}} is defined
x U : μ C O N ( A ) ( x ) = μ A 2 ( x ) = μ A ( x ) 2 . {\displaystyle \forall x\in U:\mu _{CON(A)}(x)=\mu _{A^{2}}(x)=\mu _{A}(x)^{2}.}

Taking 0 0 = 1 {\displaystyle 0^{0}=1} , we have A 0 = U {\displaystyle A^{0}=U} and A 1 = A . {\displaystyle A^{1}=A.}

  • Given fuzzy sets A , B {\displaystyle A,B} , the fuzzy set difference A B {\displaystyle A\setminus B} , also denoted A B {\displaystyle A-B} , may be defined straightforwardly via the membership function:
x U : μ A B ( x ) = t ( μ A ( x ) , n ( μ B ( x ) ) ) , {\displaystyle \forall x\in U:\mu _{A\setminus {B}}(x)=t(\mu _{A}(x),n(\mu _{B}(x))),}
which means A B = A ¬ B {\displaystyle A\setminus B=A\cap \neg {B}} , e. g.:
x U : μ A B ( x ) = min ( μ A ( x ) , 1 μ B ( x ) ) . {\displaystyle \forall x\in U:\mu _{A\setminus {B}}(x)=\min(\mu _{A}(x),1-\mu _{B}(x)).}
Another proposal for a set difference could be:
x U : μ A B ( x ) = μ A ( x ) t ( μ A ( x ) , μ B ( x ) ) . {\displaystyle \forall x\in U:\mu _{A-{B}}(x)=\mu _{A}(x)-t(\mu _{A}(x),\mu _{B}(x)).}
  • Proposals for symmetric fuzzy set differences have been made by Dubois and Prade (1980), either by taking the absolute value, giving
x U : μ A B ( x ) = | μ A ( x ) μ B ( x ) | , {\displaystyle \forall x\in U:\mu _{A\triangle B}(x)=|\mu _{A}(x)-\mu _{B}(x)|,}
or by using a combination of just max, min, and standard negation, giving
x U : μ A B ( x ) = max ( min ( μ A ( x ) , 1 μ B ( x ) ) , min ( μ B ( x ) , 1 μ A ( x ) ) ) . {\displaystyle \forall x\in U:\mu _{A\triangle B}(x)=\max(\min(\mu _{A}(x),1-\mu _{B}(x)),\min(\mu _{B}(x),1-\mu _{A}(x))).}
Axioms for definition of generalized symmetric differences analogous to those for t-norms, t-conorms, and negators have been proposed by Vemur et al. (2014) with predecessors by Alsina et al. (2005) and Bedregal et al. (2009).
  • In contrast to crisp sets, averaging operations can also be defined for fuzzy sets.

Disjoint fuzzy sets

In contrast to the general ambiguity of intersection and union operations, there is clearness for disjoint fuzzy sets: Two fuzzy sets A , B {\displaystyle A,B} are disjoint iff

x U : μ A ( x ) = 0 μ B ( x ) = 0 {\displaystyle \forall x\in U:\mu _{A}(x)=0\lor \mu _{B}(x)=0}

which is equivalent to

{\displaystyle \nexists } x U : μ A ( x ) > 0 μ B ( x ) > 0 {\displaystyle x\in U:\mu _{A}(x)>0\land \mu _{B}(x)>0}

and also equivalent to

x U : min ( μ A ( x ) , μ B ( x ) ) = 0 {\displaystyle \forall x\in U:\min(\mu _{A}(x),\mu _{B}(x))=0}

We keep in mind that min/max is a t/s-norm pair, and any other will work here as well.

Fuzzy sets are disjoint if and only if their supports are disjoint according to the standard definition for crisp sets.

For disjoint fuzzy sets A , B {\displaystyle A,B} any intersection will give ∅, and any union will give the same result, which is denoted as

A ˙ B = A B {\displaystyle A\,{\dot {\cup }}\,B=A\cup B}

with its membership function given by

x U : μ A ˙ B ( x ) = μ A ( x ) + μ B ( x ) {\displaystyle \forall x\in U:\mu _{A{\dot {\cup }}B}(x)=\mu _{A}(x)+\mu _{B}(x)}

Note that only one of both summands is greater than zero.

For disjoint fuzzy sets A , B {\displaystyle A,B} the following holds true:

Supp ( A ˙ B ) = Supp ( A ) Supp ( B ) {\displaystyle \operatorname {Supp} (A\,{\dot {\cup }}\,B)=\operatorname {Supp} (A)\cup \operatorname {Supp} (B)}

This can be generalized to finite families of fuzzy sets as follows: Given a family A = ( A i ) i I {\displaystyle A=(A_{i})_{i\in I}} of fuzzy sets with index set I (e.g. I = {1,2,3,...,n}). This family is (pairwise) disjoint iff

for all  x U  there exists at most one  i I  such that  μ A i ( x ) > 0. {\displaystyle {\text{for all }}x\in U{\text{ there exists at most one }}i\in I{\text{ such that }}\mu _{A_{i}}(x)>0.}

A family of fuzzy sets A = ( A i ) i I {\displaystyle A=(A_{i})_{i\in I}} is disjoint, iff the family of underlying supports Supp A = ( Supp ( A i ) ) i I {\displaystyle \operatorname {Supp} \circ A=(\operatorname {Supp} (A_{i}))_{i\in I}} is disjoint in the standard sense for families of crisp sets.

Independent of the t/s-norm pair, intersection of a disjoint family of fuzzy sets will give ∅ again, while the union has no ambiguity:

i I ˙ A i = i I A i {\displaystyle {\dot {\bigcup \limits _{i\in I}}}\,A_{i}=\bigcup _{i\in I}A_{i}}

with its membership function given by

x U : μ i I ˙ A i ( x ) = i I μ A i ( x ) {\displaystyle \forall x\in U:\mu _{{\dot {\bigcup \limits _{i\in I}}}A_{i}}(x)=\sum _{i\in I}\mu _{A_{i}}(x)}

Again only one of the summands is greater than zero.

For disjoint families of fuzzy sets A = ( A i ) i I {\displaystyle A=(A_{i})_{i\in I}} the following holds true:

Supp ( i I ˙ A i ) = i I Supp ( A i ) {\displaystyle \operatorname {Supp} \left({\dot {\bigcup \limits _{i\in I}}}\,A_{i}\right)=\bigcup \limits _{i\in I}\operatorname {Supp} (A_{i})}

Scalar cardinality

For a fuzzy set A {\displaystyle A} with finite support Supp ( A ) {\displaystyle \operatorname {Supp} (A)} (i.e. a "finite fuzzy set"), its cardinality (aka scalar cardinality or sigma-count) is given by

Card ( A ) = sc ( A ) = | A | = x U μ A ( x ) {\displaystyle \operatorname {Card} (A)=\operatorname {sc} (A)=|A|=\sum _{x\in U}\mu _{A}(x)} .

In the case that U itself is a finite set, the relative cardinality is given by

RelCard ( A ) = A = sc ( A ) / | U | = | A | / | U | {\displaystyle \operatorname {RelCard} (A)=\|A\|=\operatorname {sc} (A)/|U|=|A|/|U|} .

This can be generalized for the divisor to be a non-empty fuzzy set: For fuzzy sets A , G {\displaystyle A,G} with G ≠ ∅, we can define the relative cardinality by:

RelCard ( A , G ) = sc ( A | G ) = sc ( A G ) / sc ( G ) {\displaystyle \operatorname {RelCard} (A,G)=\operatorname {sc} (A|G)=\operatorname {sc} (A\cap {G})/\operatorname {sc} (G)} ,

which looks very similar to the expression for conditional probability. Note:

  • sc ( G ) > 0 {\displaystyle \operatorname {sc} (G)>0} here.
  • The result may depend on the specific intersection (t-norm) chosen.
  • For G = U {\displaystyle G=U} the result is unambiguous and resembles the prior definition.

Distance and similarity

For any fuzzy set A {\displaystyle A} the membership function μ A : U [ 0 , 1 ] {\displaystyle \mu _{A}:U\to } can be regarded as a family μ A = ( μ A ( x ) ) x U [ 0 , 1 ] U {\displaystyle \mu _{A}=(\mu _{A}(x))_{x\in U}\in ^{U}} . The latter is a metric space with several metrics d {\displaystyle d} known. A metric can be derived from a norm (vector norm) {\displaystyle \|\,\|} via

d ( α , β ) = α β {\displaystyle d(\alpha ,\beta )=\|\alpha -\beta \|} .

For instance, if U {\displaystyle U} is finite, i.e. U = { x 1 , x 2 , . . . x n } {\displaystyle U=\{x_{1},x_{2},...x_{n}\}} , such a metric may be defined by:

d ( α , β ) := max { | α ( x i ) β ( x i ) | : i = 1 , . . . , n } {\displaystyle d(\alpha ,\beta ):=\max\{|\alpha (x_{i})-\beta (x_{i})|:i=1,...,n\}} where α {\displaystyle \alpha } and β {\displaystyle \beta } are sequences of real numbers between 0 and 1.

For infinite U {\displaystyle U} , the maximum can be replaced by a supremum. Because fuzzy sets are unambiguously defined by their membership function, this metric can be used to measure distances between fuzzy sets on the same universe:

d ( A , B ) := d ( μ A , μ B ) {\displaystyle d(A,B):=d(\mu _{A},\mu _{B})} ,

which becomes in the above sample:

d ( A , B ) = max { | μ A ( x i ) μ B ( x i ) | : i = 1 , . . . , n } {\displaystyle d(A,B)=\max\{|\mu _{A}(x_{i})-\mu _{B}(x_{i})|:i=1,...,n\}} .

Again for infinite U {\displaystyle U} the maximum must be replaced by a supremum. Other distances (like the canonical 2-norm) may diverge, if infinite fuzzy sets are too different, e.g., {\displaystyle \varnothing } and U {\displaystyle U} .

Similarity measures (here denoted by S {\displaystyle S} ) may then be derived from the distance, e.g. after a proposal by Koczy:

S = 1 / ( 1 + d ( A , B ) ) {\displaystyle S=1/(1+d(A,B))} if d ( A , B ) {\displaystyle d(A,B)} is finite, 0 {\displaystyle 0} else,

or after Williams and Steele:

S = exp ( α d ( A , B ) ) {\displaystyle S=\exp(-\alpha {d(A,B)})} if d ( A , B ) {\displaystyle d(A,B)} is finite, 0 {\displaystyle 0} else

where α > 0 {\displaystyle \alpha >0} is a steepness parameter and exp ( x ) = e x {\displaystyle \exp(x)=e^{x}} .

L-fuzzy sets

Sometimes, more general variants of the notion of fuzzy set are used, with membership functions taking values in a (fixed or variable) algebra or structure L {\displaystyle L} of a given kind; usually it is required that L {\displaystyle L} be at least a poset or lattice. These are usually called L-fuzzy sets, to distinguish them from those valued over the unit interval. The usual membership functions with values in are then called -valued membership functions. These kinds of generalizations were first considered in 1967 by Joseph Goguen, who was a student of Zadeh. A classical corollary may be indicating truth and membership values by {f, t} instead of {0, 1}.

An extension of fuzzy sets has been provided by Atanassov. An intuitionistic fuzzy set (IFS) A {\displaystyle A} is characterized by two functions:

1. μ A ( x ) {\displaystyle \mu _{A}(x)} – degree of membership of x
2. ν A ( x ) {\displaystyle \nu _{A}(x)} – degree of non-membership of x

with functions μ A , ν A : U [ 0 , 1 ] {\displaystyle \mu _{A},\nu _{A}:U\to } with x U : μ A ( x ) + ν A ( x ) 1 {\displaystyle \forall x\in U:\mu _{A}(x)+\nu _{A}(x)\leq 1} .

This resembles a situation like some person denoted by x {\displaystyle x} voting

  • for a proposal A {\displaystyle A} : ( μ A ( x ) = 1 , ν A ( x ) = 0 {\displaystyle \mu _{A}(x)=1,\nu _{A}(x)=0} ),
  • against it: ( μ A ( x ) = 0 , ν A ( x ) = 1 {\displaystyle \mu _{A}(x)=0,\nu _{A}(x)=1} ),
  • or abstain from voting: ( μ A ( x ) = ν A ( x ) = 0 {\displaystyle \mu _{A}(x)=\nu _{A}(x)=0} ).

After all, we have a percentage of approvals, a percentage of denials, and a percentage of abstentions.

For this situation, special "intuitive fuzzy" negators, t- and s-norms can be defined. With D = { ( α , β ) [ 0 , 1 ] 2 : α + β = 1 } {\displaystyle D^{*}=\{(\alpha ,\beta )\in ^{2}:\alpha +\beta =1\}} and by combining both functions to ( μ A , ν A ) : U D {\displaystyle (\mu _{A},\nu _{A}):U\to D^{*}} this situation resembles a special kind of L-fuzzy sets.

Once more, this has been expanded by defining picture fuzzy sets (PFS) as follows: A PFS A is characterized by three functions mapping U to : μ A , η A , ν A {\displaystyle \mu _{A},\eta _{A},\nu _{A}} , "degree of positive membership", "degree of neutral membership", and "degree of negative membership" respectively and additional condition x U : μ A ( x ) + η A ( x ) + ν A ( x ) 1 {\displaystyle \forall x\in U:\mu _{A}(x)+\eta _{A}(x)+\nu _{A}(x)\leq 1} This expands the voting sample above by an additional possibility of "refusal of voting".

With D = { ( α , β , γ ) [ 0 , 1 ] 3 : α + β + γ = 1 } {\displaystyle D^{*}=\{(\alpha ,\beta ,\gamma )\in ^{3}:\alpha +\beta +\gamma =1\}} and special "picture fuzzy" negators, t- and s-norms this resembles just another type of L-fuzzy sets.

Pythagorean fuzzy sets

One extension of IFS is what is known as Pythagorean fuzzy sets. Such sets satisfy the constraint μ A ( x ) 2 + ν A ( x ) 2 1 {\displaystyle \mu _{A}(x)^{2}+\nu _{A}(x)^{2}\leq 1} , which is reminiscent of the Pythagorean theorem. Pythagorean fuzzy sets can be applicable to real life applications in which the previous condition of μ A ( x ) + ν A ( x ) 1 {\displaystyle \mu _{A}(x)+\nu _{A}(x)\leq 1} is not valid. However, the less restrictive condition of μ A ( x ) 2 + ν A ( x ) 2 1 {\displaystyle \mu _{A}(x)^{2}+\nu _{A}(x)^{2}\leq 1} may be suitable in more domains.

Fuzzy logic

Main article: Fuzzy logic

As an extension of the case of multi-valued logic, valuations ( μ : V o W {\displaystyle \mu :{\mathit {V}}_{o}\to {\mathit {W}}} ) of propositional variables ( V o {\displaystyle {\mathit {V}}_{o}} ) into a set of membership degrees ( W {\displaystyle {\mathit {W}}} ) can be thought of as membership functions mapping predicates into fuzzy sets (or more formally, into an ordered set of fuzzy pairs, called a fuzzy relation). With these valuations, many-valued logic can be extended to allow for fuzzy premises from which graded conclusions may be drawn.

This extension is sometimes called "fuzzy logic in the narrow sense" as opposed to "fuzzy logic in the wider sense," which originated in the engineering fields of automated control and knowledge engineering, and which encompasses many topics involving fuzzy sets and "approximated reasoning."

Industrial applications of fuzzy sets in the context of "fuzzy logic in the wider sense" can be found at fuzzy logic.

Fuzzy number

Main article: Fuzzy number

A fuzzy number is a fuzzy set that satisfies all the following conditions:

  • A is normalised;
  • A is a convex set;
  • The membership function μ A ( x ) {\displaystyle \mu _{A}(x)} achieves the value 1 at least once;
  • The membership function μ A ( x ) {\displaystyle \mu _{A}(x)} is at least segmentally continuous.

If these conditions are not satisfied, then A is not a fuzzy number. The core of this fuzzy number is a singleton; its location is:

C ( A ) = x : μ A ( x ) = 1 {\displaystyle \,C(A)=x^{*}:\mu _{A}(x^{*})=1}

Fuzzy numbers can be likened to the funfair game "guess your weight," where someone guesses the contestant's weight, with closer guesses being more correct, and where the guesser "wins" if he or she guesses near enough to the contestant's weight, with the actual weight being completely correct (mapping to 1 by the membership function).

The kernel K ( A ) = Kern ( A ) {\displaystyle K(A)=\operatorname {Kern} (A)} of a fuzzy interval A {\displaystyle A} is defined as the 'inner' part, without the 'outbound' parts where the membership value is constant ad infinitum. In other words, the smallest subset of R {\displaystyle \mathbb {R} } where μ A ( x ) {\displaystyle \mu _{A}(x)} is constant outside of it, is defined as the kernel.

However, there are other concepts of fuzzy numbers and intervals as some authors do not insist on convexity.

Fuzzy categories

The use of set membership as a key component of category theory can be generalized to fuzzy sets. This approach, which began in 1968 shortly after the introduction of fuzzy set theory, led to the development of Goguen categories in the 21st century. In these categories, rather than using two valued set membership, more general intervals are used, and may be lattices as in L-fuzzy sets.

There are numerous mathematical extensions similar to or more general than fuzzy sets. Since fuzzy sets were introduced in 1965 by Zadeh, many new mathematical constructions and theories treating imprecision, inaccuracy, vagueness, uncertainty and vulnerability have been developed. Some of these constructions and theories are extensions of fuzzy set theory, while others attempt to mathematically model inaccuracy/vagueness and uncertainty in a different way. The diversity of such constructions and corresponding theories includes:

  • Fuzzy Sets (Zadeh, 1965)
  • interval sets (Moore, 1966),
  • L-fuzzy sets (Goguen, 1967),
  • flou sets (Gentilhomme, 1968),
  • type-2 fuzzy sets and type-n fuzzy sets (Zadeh, 1975),
  • interval-valued fuzzy sets (Grattan-Guinness, 1975; Jahn, 1975; Sambuc, 1975; Zadeh, 1975),
  • level fuzzy sets (Radecki, 1977)
  • rough sets (Pawlak, 1982),
  • intuitionistic fuzzy sets (Atanassov, 1983),
  • fuzzy multisets (Yager, 1986),
  • intuitionistic L-fuzzy sets (Atanassov, 1986),
  • rough multisets (Grzymala-Busse, 1987),
  • fuzzy rough sets (Nakamura, 1988),
  • real-valued fuzzy sets (Blizard, 1989),
  • vague sets (Wen-Lung Gau and Buehrer, 1993),
  • α-level sets (Yao, 1997),
  • shadowed sets (Pedrycz, 1998),
  • neutrosophic sets (NSs) (Smarandache, 1998),
  • bipolar fuzzy sets (Wen-Ran Zhang, 1998),
  • genuine sets (Demirci, 1999),
  • soft sets (Molodtsov, 1999),
  • complex fuzzy set (2002),
  • intuitionistic fuzzy rough sets (Cornelis, De Cock and Kerre, 2003)
  • L-fuzzy rough sets (Radzikowska and Kerre, 2004),
  • multi-fuzzy sets (Sabu Sebastian, 2009),
  • generalized rough fuzzy sets (Feng, 2010)
  • rough intuitionistic fuzzy sets (Thomas and Nair, 2011),
  • soft rough fuzzy sets (Meng, Zhang and Qin, 2011)
  • soft fuzzy rough sets (Meng, Zhang and Qin, 2011)
  • soft multisets (Alkhazaleh, Salleh and Hassan, 2011)
  • fuzzy soft multisets (Alkhazaleh and Salleh, 2012)
  • pythagorean fuzzy set (Yager , 2013),
  • picture fuzzy set (Cuong, 2013),
  • spherical fuzzy set (Mahmood, 2018).

Although applications of fuzzy sets theory and its extension are vast in our real life problem, there is a single book which covers all the extensions of fuzzy set theory. This single book which covers all the extensions of fuzzy sets from the last 54 years. This book can be used both as a reference book as well as a text-book for a variety of courses. Book name is “Fundamentals on Extension of Fuzzy Sets".

Fuzzy relation equation

This section needs additional citations for verification. Please help improve this article by adding citations to reliable sources in this section. Unsourced material may be challenged and removed. (November 2015) (Learn how and when to remove this message)

The fuzzy relation equation is an equation of the form A · R = B, where A and B are fuzzy sets, R is a fuzzy relation, and A · R stands for the composition of A with R .

Entropy

A measure d of fuzziness for fuzzy sets of universe U {\displaystyle U} should fulfill the following conditions for all x U {\displaystyle x\in U} :

  1. d ( A ) = 0 {\displaystyle d(A)=0} if A {\displaystyle A} is a crisp set: μ A ( x ) { 0 , 1 } {\displaystyle \mu _{A}(x)\in \{0,\,1\}}
  2. d ( A ) {\displaystyle d(A)} has a unique maximum iff x U : μ A ( x ) = 0.5 {\displaystyle \forall x\in U:\mu _{A}(x)=0.5}
  3. μ A μ B {\displaystyle \mu _{A}\leq \mu _{B}\iff }
μ A μ B 0.5 {\displaystyle \mu _{A}\leq \mu _{B}\leq 0.5}
μ A μ B 0.5 {\displaystyle \mu _{A}\geq \mu _{B}\geq 0.5}
which means that B is "crisper" than A.
  1. d ( ¬ A ) = d ( A ) {\displaystyle d(\neg {A})=d(A)}

In this case d ( A ) {\displaystyle d(A)} is called the entropy of the fuzzy set A.

For finite U = { x 1 , x 2 , . . . x n } {\displaystyle U=\{x_{1},x_{2},...x_{n}\}} the entropy of a fuzzy set A {\displaystyle A} is given by

d ( A ) = H ( A ) + H ( ¬ A ) {\displaystyle d(A)=H(A)+H(\neg {A})} ,
H ( A ) = k i = 1 n μ A ( x i ) ln μ A ( x i ) {\displaystyle H(A)=-k\sum _{i=1}^{n}\mu _{A}(x_{i})\ln \mu _{A}(x_{i})}

or just

d ( A ) = k i = 1 n S ( μ A ( x i ) ) {\displaystyle d(A)=-k\sum _{i=1}^{n}S(\mu _{A}(x_{i}))}

where S ( x ) = H e ( x ) {\displaystyle S(x)=H_{e}(x)} is Shannon's function (natural entropy function)

S ( α ) = α ln α ( 1 α ) ln ( 1 α ) ,   α [ 0 , 1 ] {\displaystyle S(\alpha )=-\alpha \ln \alpha -(1-\alpha )\ln(1-\alpha ),\ \alpha \in }

and k {\displaystyle k} is a constant depending on the measure unit and the logarithm base used (here we have used the natural base e). The physical interpretation of k is the Boltzmann constant k.

Let A {\displaystyle A} be a fuzzy set with a continuous membership function (fuzzy variable). Then

H ( A ) = k Cr { A t } ln Cr { A t } d t {\displaystyle H(A)=-k\int _{-\infty }^{\infty }\operatorname {Cr} \lbrace A\geq t\rbrace \ln \operatorname {Cr} \lbrace A\geq t\rbrace \,dt}

and its entropy is

d ( A ) = k S ( Cr { A t } ) d t . {\displaystyle d(A)=-k\int _{-\infty }^{\infty }S(\operatorname {Cr} \lbrace A\geq t\rbrace )\,dt.}

Extensions

There are many mathematical constructions similar to or more general than fuzzy sets. Since fuzzy sets were introduced in 1965, many new mathematical constructions and theories treating imprecision, inexactness, ambiguity, and uncertainty have been developed. Some of these constructions and theories are extensions of fuzzy set theory, while others try to mathematically model imprecision and uncertainty in a different way.

See also

References

  1. L. A. Zadeh (1965) "Fuzzy sets" Archived 2015-08-13 at the Wayback Machine. Information and Control 8 (3) 338–353.
  2. Klaua, D. (1965) Über einen Ansatz zur mehrwertigen Mengenlehre. Monatsb. Deutsch. Akad. Wiss. Berlin 7, 859–876. A recent in-depth analysis of this paper has been provided by Gottwald, S. (2010). "An early approach toward graded identity and graded membership in set theory". Fuzzy Sets and Systems. 161 (18): 2369–2379. doi:10.1016/j.fss.2009.12.005.
  3. D. Dubois and H. Prade (1988) Fuzzy Sets and Systems. Academic Press, New York.
  4. Liang, Lily R.; Lu, Shiyong; Wang, Xuena; Lu, Yi; Mandal, Vinay; Patacsil, Dorrelyn; Kumar, Deepak (2006). "FM-test: A fuzzy-set-theory-based approach to differential gene expression data analysis". BMC Bioinformatics. 7 (Suppl 4): S7. doi:10.1186/1471-2105-7-S4-S7. PMC 1780132. PMID 17217525.
  5. "AAAI". Archived from the original on August 5, 2008.
  6. Bellman, Richard; Giertz, Magnus (1973). "On the analytic formalism of the theory of fuzzy sets". Information Sciences. 5: 149–156. doi:10.1016/0020-0255(73)90009-1.
  7. ^ N.R. Vemuri, A.S. Hareesh, M.S. Srinath: Set Difference and Symmetric Difference of Fuzzy Sets, in: Fuzzy Sets Theory and Applications 2014, Liptovský Ján, Slovak Republic
  8. Goguen, J.A (1967). "L-fuzzy sets". Journal of Mathematical Analysis and Applications. 18: 145–174. doi:10.1016/0022-247X(67)90189-8.
  9. Bui Cong Cuong, Vladik Kreinovich, Roan Thi Ngan: A classification of representable t-norm operators for picture fuzzy sets, in: Departmental Technical Reports (CS). Paper 1047, 2016
  10. Yager, Ronald R. (June 2013). "Pythagorean fuzzy subsets". 2013 Joint IFSA World Congress and NAFIPS Annual Meeting (IFSA/NAFIPS). pp. 57–61. doi:10.1109/IFSA-NAFIPS.2013.6608375. ISBN 978-1-4799-0348-1. S2CID 36286152.
  11. Yager, Ronald R (2013). "Pythagorean membership grades in multicriteria decision making". IEEE Transactions on Fuzzy Systems. 22 (4): 958–965. doi:10.1109/TFUZZ.2013.2278989. S2CID 37195356.
  12. Yager, Ronald R. (December 2015). Properties and applications of Pythagorean fuzzy sets. Cham: Springer. pp. 119–136. ISBN 978-3-319-26302-1.
  13. Yanase J, Triantaphyllou E (2019). "A Systematic Survey of Computer-Aided Diagnosis in Medicine: Past and Present Developments". Expert Systems with Applications. 138: 112821. doi:10.1016/j.eswa.2019.112821. S2CID 199019309.
  14. Yanase J, Triantaphyllou E (2019). "The Seven Key Challenges for the Future of Computer-Aided Diagnosis in Medicine". International Journal of Medical Informatics. 129: 413–422. doi:10.1016/j.ijmedinf.2019.06.017. PMID 31445285. S2CID 198287435.
  15. Siegfried Gottwald, 2001. A Treatise on Many-Valued Logics. Baldock, Hertfordshire, England: Research Studies Press Ltd., ISBN 978-0-86380-262-1
  16. Zadeh, L.A. (1975). "The concept of a linguistic variable and its application to approximate reasoning—I". Information Sciences. 8 (3): 199–249. doi:10.1016/0020-0255(75)90036-5.
  17. Zadeh, L.A. (1999). "Fuzzy sets as a basis for a theory of possibility". Fuzzy Sets and Systems. 100: 9–34. doi:10.1016/S0165-0114(99)80004-9.
  18. J. A. Goguen "Categories of fuzzy sets: applications of non-Cantorian set theory" PhD Thesis University of California, Berkeley, 1968
  19. Michael Winter "Goguen Categories:A Categorical Approach to L-fuzzy Relations" 2007 Springer ISBN 9781402061639
  20. ^ Winter, Michael (2003). "Representation theory of Goguen categories". Fuzzy Sets and Systems. 138: 85–126. doi:10.1016/S0165-0114(02)00508-0.
  21. Goguen, J.A (1967). "L-fuzzy sets". Journal of Mathematical Analysis and Applications. 18: 145–174. doi:10.1016/0022-247X(67)90189-8.
  22. Xuecheng, Liu (1992). "Entropy, distance measure and similarity measure of fuzzy sets and their relations". Fuzzy Sets and Systems. 52 (3): 305–318. doi:10.1016/0165-0114(92)90239-Z.
  23. Li, Xiang (2015). "Fuzzy cross-entropy". Journal of Uncertainty Analysis and Applications. 3. doi:10.1186/s40467-015-0029-5.
  24. Burgin & Chunihin 1997; Kerre 2001; Deschrijver & Kerre 2003.

Bibliography

  • Alkhazaleh, Shawkat; Salleh, Abdul Razak (2012). "Fuzzy Soft Multiset Theory". Abstract and Applied Analysis. doi:10.1155/2012/350603.
  • Atanassov, K. T. (1983) Intuitionistic fuzzy sets, VII ITKR's Session, Sofia (deposited in Central Sci.-Technical Library of Bulg. Acad. of Sci., 1697/84) (in Bulgarian)
  • Atanassov, Krassimir T. (1986). "Intuitionistic fuzzy sets". Fuzzy Sets and Systems. 20: 87–96. doi:10.1016/S0165-0114(86)80034-3.
  • Bezdek, J.C. (1978). "Fuzzy partitions and relations and axiomatic basis for clustering". Fuzzy Sets and Systems. 1 (2): 111–127. doi:10.1016/0165-0114(78)90012-X.
  • Blizard, Wayne D. (1989). "Real-valued multisets and fuzzy sets". Fuzzy Sets and Systems. 33: 77–97. doi:10.1016/0165-0114(89)90218-2.
  • Brown, Joseph G. (1971). "A note on fuzzy sets". Information and Control. 18: 32–39. doi:10.1016/S0019-9958(71)90288-9.
  • Brutoczki Kornelia: Fuzzy Logic (Diploma) – Although this script has many oddities and intricacies due to its incompleteness, it may be used a template for exercise in removing these issues.
  • Burgin, M. Theory of Named Sets as a Foundational Basis for Mathematics, in Structures in Mathematical Theories, San Sebastian, 1990, pp.  417–420
  • Burgin, M.; Chunihin, A. (1997). "Named Sets in the Analysis of Uncertainty". Methodological and Theoretical Problems of Mathematics and Information Sciences. Kiev: 72–85.
  • Cattaneo, Gianpiero; Ciucci, Davide (2002). "Heyting Wajsberg Algebras as an Abstract Environment Linking Fuzzy and Rough Sets". Rough Sets and Current Trends in Computing. Lecture Notes in Computer Science. Vol. 2475. pp. 77–84. doi:10.1007/3-540-45813-1_10. ISBN 978-3-540-44274-5.
  • Chamorro-Martínez, J.; Sánchez, D.; Soto-Hidalgo, J.M.; Martínez-Jiménez, P.M. (2014). "A discussion on fuzzy cardinality and quantification. Some applications in image processing". Fuzzy Sets and Systems. 257: 85–101. doi:10.1016/j.fss.2013.05.009.
  • Chapin, E.W. (1974) Set-valued Set Theory, I, Notre Dame J. Formal Logic, v. 15, pp. 619–634
  • Chapin, E.W. (1975) Set-valued Set Theory, II, Notre Dame J. Formal Logic, v. 16, pp. 255–267
  • Cornelis, Chris; De Cock, Martine; Kerre, Etienne E. (2003). "Intuitionistic fuzzy rough sets: At the crossroads of imperfect knowledge". Expert Systems. 20 (5): 260–270. doi:10.1111/1468-0394.00250. S2CID 15031773.
  • Cornelis, Chris; Deschrijver, Glad; Kerre, Etienne E. (2004). "Implication in intuitionistic fuzzy and interval-valued fuzzy set theory: Construction, classification, application". International Journal of Approximate Reasoning. 35: 55–95. doi:10.1016/S0888-613X(03)00072-0.
  • De Cock, Martine; Bodenhofer, Ulrich; Kerre, Etienne E. (1–4 October 2000). Modelling Linguistic Expressions Using Fuzzy Relations. Proceedings of the 6th International Conference on Soft Computing. Iizuka, Japan. pp. 353–360. CiteSeerX 10.1.1.32.8117.
  • Demirci, Mustafa (1999). "Genuine sets". Fuzzy Sets and Systems. 105 (3): 377–384. doi:10.1016/S0165-0114(97)00235-2.
  • Deschrijver, G.; Kerre, E.E. (2003). "On the relationship between some extensions of fuzzy set theory". Fuzzy Sets and Systems. 133 (2): 227–235. doi:10.1016/S0165-0114(02)00127-6.
  • Didier Dubois, Henri M. Prade, ed. (2000). Fundamentals of fuzzy sets. The Handbooks of Fuzzy Sets Series. Vol. 7. Springer. ISBN 978-0-7923-7732-0.
  • Feng, Feng (2009). "Generalized Rough Fuzzy Sets Based on Soft Sets". 2009 International Workshop on Intelligent Systems and Applications. pp. 1–4. doi:10.1109/IWISA.2009.5072885. ISBN 978-1-4244-3893-8.
  • Gentilhomme, Y. (1968) Les ensembles flous en linguistique, Cahiers de Linguistique Théorique et Appliquée, 5, pp. 47–63
  • Goguen, J.A (1967). "L-fuzzy sets". Journal of Mathematical Analysis and Applications. 18: 145–174. doi:10.1016/0022-247X(67)90189-8.
  • Gottwald, S. (2006). "Universes of Fuzzy Sets and Axiomatizations of Fuzzy Set Theory. Part I: Model-Based and Axiomatic Approaches". Studia Logica. 82 (2): 211–244. doi:10.1007/s11225-006-7197-8. S2CID 11931230.. Gottwald, S. (2006). "Universes of Fuzzy Sets and Axiomatizations of Fuzzy Set Theory. Part II: Category Theoretic Approaches". Studia Logica. 84: 23–50. doi:10.1007/s11225-006-9001-1. S2CID 10453751. preprint..
  • Grattan-Guinness, I. (1975) Fuzzy membership mapped onto interval and many-valued quantities. Z. Math. Logik. Grundladen Math. 22, pp. 149–160.
  • Grzymala-Busse, J. Learning from examples based on rough multisets, in Proceedings of the 2nd International Symposium on Methodologies for Intelligent Systems, Charlotte, NC, USA, 1987, pp. 325–332
  • Gylys, R. P. (1994) Quantal sets and sheaves over quantales, Liet. Matem. Rink., v. 34, No. 1, pp. 9–31.
  • Ulrich Höhle, Stephen Ernest Rodabaugh, ed. (1999). Mathematics of fuzzy sets: logic, topology, and measure theory. The Handbooks of Fuzzy Sets Series. Vol. 3. Springer. ISBN 978-0-7923-8388-8.
  • Jahn, K.-U. (1975). "Intervall-wertige Mengen". Mathematische Nachrichten. 68: 115–132. doi:10.1002/MANA.19750680109.
  • Kaufmann, Arnold. Introduction to the theory of fuzzy subsets. Vol. 2. Academic Press, 1975.
  • Kerre, E.E. (2001). "A First View on the Alternatives of Fuzzy Set Theory". In B. Reusch; K-H. Temme (eds.). Computational Intelligence in Theory and Practice. Heidelberg: Physica-Verlag. pp. 55–72. doi:10.1007/978-3-7908-1831-4_4. ISBN 978-3-7908-1357-9.
  • George J. Klir; Bo Yuan (1995). Fuzzy sets and fuzzy logic: theory and applications. Prentice Hall. ISBN 978-0-13-101171-7.
  • Kuzmin, V.B. (1982). "Building Group Decisions in Spaces of Strict and Fuzzy Binary Relations" (in Russian). Nauka, Moscow.
  • Lake, John (1976). "Sets, Fuzzy Sets, Multisets and Functions". Journal of the London Mathematical Society (3): 323–326. doi:10.1112/jlms/s2-12.3.323.
  • Meng, Dan; Zhang, Xiaohong; Qin, Keyun (2011). "Soft rough fuzzy sets and soft fuzzy rough sets". Computers & Mathematics with Applications. 62 (12): 4635–4645. doi:10.1016/j.camwa.2011.10.049.
  • Miyamoto, Sadaaki (2001). "Fuzzy Multisets and Their Generalizations". Multiset Processing. Lecture Notes in Computer Science. Vol. 2235. pp. 225–235. doi:10.1007/3-540-45523-X_11. ISBN 978-3-540-43063-6.
  • Molodtsov, D. (1999). "Soft set theory—First results". Computers & Mathematics with Applications. 37 (4–5): 19–31. doi:10.1016/S0898-1221(99)00056-5.
  • Moore, R.E. Interval Analysis, New York, Prentice-Hall, 1966
  • Nakamura, A. (1988) Fuzzy rough sets, 'Notes on Multiple-valued Logic in Japan', v. 9, pp. 1–8
  • Narinyani, A.S. Underdetermined Sets – A new datatype for knowledge representation, Preprint 232, Project VOSTOK, issue 4, Novosibirsk, Computing Center, USSR Academy of Sciences, 1980
  • Pedrycz, W. (1998). "Shadowed sets: Representing and processing fuzzy sets". IEEE Transactions on Systems, Man and Cybernetics, Part B (Cybernetics). 28 (1): 103–109. doi:10.1109/3477.658584. PMID 18255928.
  • Radecki, Tadeusz (1977). "Level Fuzzy Sets". Journal of Cybernetics. 7 (3–4): 189–198. doi:10.1080/01969727708927558.
  • Radzikowska, Anna Maria; Kerre, Etienne E. (2004). "On L–Fuzzy Rough Sets". Artificial Intelligence and Soft Computing - ICAISC 2004. Lecture Notes in Computer Science. Vol. 3070. pp. 526–531. doi:10.1007/978-3-540-24844-6_78. ISBN 978-3-540-22123-4.
  • Salii, V.N. (1965). "Binary L-relations" (PDF). Izv. Vysh. Uchebn. Zaved. Matematika (in Russian). 44 (1): 133–145.
  • Ramakrishnan, T.V., and Sabu Sebastian (2010) 'A study on multi-fuzzy sets', Int. J. Appl. Math. 23, 713–721.
  • Sabu Sebastian and Ramakrishnan, T. V.(2010) 'Multi-fuzzy sets', Int. Math. Forum 50, 2471–2476.
  • Sebastian, Sabu; Ramakrishnan, T.V. (2011). "Multi-fuzzy Sets: An Extension of Fuzzy Sets". Fuzzy Information and Engineering. 3: 35–43. doi:10.1007/s12543-011-0064-y.
  • Sebastian, Sabu; Ramakrishnan, T. V. (2011). "Multi-Fuzzy Extensions of Functions". Advances in Adaptive Data Analysis. 03 (3): 339–350. doi:10.1142/S1793536911000714.
  • Sabu Sebastian and Ramakrishnan, T. V.(2011) Multi-fuzzy extension of crisp functions using bridge functions, Ann. Fuzzy Math. Inform. 2 (1), 1–8
  • Sambuc, R. Fonctions φ-floues: Application à l'aide au diagnostic en pathologie thyroidienne, Ph.D. Thesis Univ. Marseille, France, 1975.
  • Seising, Rudolf: The Fuzzification of Systems. The Genesis of Fuzzy Set Theory and Its Initial Applications—Developments up to the 1970s (Studies in Fuzziness and Soft Computing, Vol. 216) Berlin, New York, : Springer 2007.
  • Smith, Nicholas J. J. (2004). "Vagueness and Blurry Sets". Journal of Philosophical Logic. 33 (2): 165–235. doi:10.1023/B:LOGI.0000021717.26376.3f.
  • Werro, Nicolas: Fuzzy Classification of Online Customers Archived 2017-12-01 at the Wayback Machine, University of Fribourg, Switzerland, 2008, Chapter 2
  • Yager, Ronald R. (1986). "On the Theory of Bags". International Journal of General Systems. 13: 23–37. doi:10.1080/03081078608934952.
  • Yao, Y.Y., Combination of rough and fuzzy sets based on α-level sets, in: Rough Sets and Data Mining: Analysis for Imprecise Data, Lin, T.Y. and Cercone, N. (Eds.), Kluwer Academic Publishers, Boston, pp. 301–321, 1997.
  • Yao, Y. (1998). "A comparative study of fuzzy sets and rough sets". Information Sciences. 109 (1–4): 227–242. doi:10.1016/S0020-0255(98)10023-3.
  • Zadeh, L.A. (1975). "The concept of a linguistic variable and its application to approximate reasoning—I". Information Sciences. 8 (3): 199–249. doi:10.1016/0020-0255(75)90036-5.
  • Hans-Jürgen Zimmermann (2001). Fuzzy set theory—and its applications (4th ed.). Kluwer. ISBN 978-0-7923-7435-0.
Non-classical logic
Intuitionistic
Fuzzy
Substructural
Paraconsistent
Description
Many-valued
Digital logic
Others
Set theory
Overview Venn diagram of set intersection
Axioms
Operations
  • Concepts
  • Methods
Set types
Theories
Set theorists
Categories:
Fuzzy set: Difference between revisions Add topic