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In
mathematics Mathematics is a field of study that discovers and organizes methods, Mathematical theory, theories and theorems that are developed and Mathematical proof, proved for the needs of empirical sciences and mathematics itself. There are many ar ...
, fuzzy measure theory considers generalized measures in which the additive property is replaced by the weaker property of monotonicity. The central concept of fuzzy measure theory is the fuzzy measure (also ''capacity'', see ), which was introduced by Choquet in 1953 and independently defined by Sugeno in 1974 in the context of fuzzy integrals. There exists a number of different classes of fuzzy measures including plausibility/belief measures, possibility/necessity measures, and
probability Probability is a branch of mathematics and statistics concerning events and numerical descriptions of how likely they are to occur. The probability of an event is a number between 0 and 1; the larger the probability, the more likely an e ...
measures, which are a subset of classical measures.


Definitions

Let \mathbf be a
universe of discourse In the formal sciences, the domain of discourse or universe of discourse (borrowing from the mathematical concept of ''universe'') is the set of entities over which certain variables of interest in some formal treatment may range. It is also ...
, \mathcal be a
class Class, Classes, or The Class may refer to: Common uses not otherwise categorized * Class (biology), a taxonomic rank * Class (knowledge representation), a collection of individuals or objects * Class (philosophy), an analytical concept used d ...
of
subset In mathematics, a Set (mathematics), set ''A'' is a subset of a set ''B'' if all Element (mathematics), elements of ''A'' are also elements of ''B''; ''B'' is then a superset of ''A''. It is possible for ''A'' and ''B'' to be equal; if they a ...
s of \mathbf, and E,F\in\mathcal. A function g:\mathcal\to\mathbb where # \emptyset \in \mathcal \Rightarrow g(\emptyset)=0 # E \subseteq F \Rightarrow g(E)\leq g(F) is called a ''fuzzy measure''. A fuzzy measure is called ''normalized'' or ''regular'' if g(\mathbf)=1.


Properties of fuzzy measures

A fuzzy measure is: * additive if for any E,F \in \mathcal such that E \cap F = \emptyset , we have g(E \cup F) = g(E) + g(F). ; * supermodular if for any E,F \in \mathcal , we have g(E \cup F) + g(E \cap F) \geq g(E) + g(F); * submodular if for any E,F \in \mathcal , we have g(E \cup F) + g(E \cap F) \leq g(E) + g(F); * superadditive if for any E,F \in \mathcal such that E \cap F = \emptyset , we have g(E \cup F) \geq g(E) + g(F); * subadditive if for any E,F \in \mathcal such that E \cap F = \emptyset , we have g(E \cup F) \leq g(E) + g(F); * symmetric if for any E,F \in \mathcal , we have , E, = , F, implies g(E) = g(F); * Boolean if for any E \in \mathcal , we have g(E) = 0 or g(E) = 1 . Understanding the properties of fuzzy measures is useful in application. When a fuzzy measure is used to define a function such as the Sugeno integral or Choquet integral, these properties will be crucial in understanding the function's behavior. For instance, the Choquet integral with respect to an additive fuzzy measure reduces to the
Lebesgue integral In mathematics, the integral of a non-negative Function (mathematics), function of a single variable can be regarded, in the simplest case, as the area between the Graph of a function, graph of that function and the axis. The Lebesgue integral, ...
. In discrete cases, a symmetric fuzzy measure will result in the ordered weighted averaging (OWA) operator. Submodular fuzzy measures result in convex functions, while supermodular fuzzy measures result in concave functions when used to define a Choquet integral.


Möbius representation

Let ''g'' be a fuzzy measure. The Möbius representation of ''g'' is given by the set function ''M'', where for every E,F \subseteq X , :M(E) = \sum_ (-1)^ g(F). The equivalent axioms in Möbius representation are: # M(\emptyset)=0. # \sum_ M(F) \geq 0, for all E \subseteq \mathbf and all i \in E A fuzzy measure in Möbius representation ''M'' is called ''normalized'' if \sum_M(E)=1. Möbius representation can be used to give an indication of which subsets of X interact with one another. For instance, an additive fuzzy measure has Möbius values all equal to zero except for singletons. The fuzzy measure ''g'' in standard representation can be recovered from the Möbius form using the Zeta transform: : g(E) = \sum_ M(F), \forall E \subseteq \mathbf .


Simplification assumptions for fuzzy measures

Fuzzy measures are defined on a semiring of sets or monotone class, which may be as granular as the
power set In mathematics, the power set (or powerset) of a set is the set of all subsets of , including the empty set and itself. In axiomatic set theory (as developed, for example, in the ZFC axioms), the existence of the power set of any set is po ...
of X, and even in discrete cases the number of variables can be as large as 2, X, . For this reason, in the context of multi-criteria decision analysis and other disciplines, simplification assumptions on the fuzzy measure have been introduced so that it is less computationally expensive to determine and use. For instance, when it is assumed the fuzzy measure is ''additive'', it will hold that g(E) = \sum_ g(\) and the values of the fuzzy measure can be evaluated from the values on X. Similarly, a ''symmetric'' fuzzy measure is defined uniquely by , X, values. Two important fuzzy measures that can be used are the Sugeno- or \lambda-fuzzy measure and ''k''-additive measures, introduced by Sugeno and Grabisch respectively.


Sugeno ''λ''-measure

The Sugeno \lambda-measure is a special case of fuzzy measures defined iteratively. It has the following definition:


Definition

Let \mathbf = \left\lbrace x_1,\dots,x_n \right\rbrace be a finite set and let \lambda \in (-1,+\infty). A Sugeno \lambda-measure is a function g:2^X\to ,1/math> such that # g(X) = 1. # if A, B\subseteq \mathbf (alternatively A, B\in 2^) with A \cap B = \emptyset then g(A \cup B) =g(A)+g(B)+\lambda g(A)g(B). As a convention, the value of g at a singleton set \left\lbrace x_i \right\rbrace is called a density and is denoted by g_i = g(\left\lbrace x_i \right\rbrace). In addition, we have that \lambda satisfies the property : \lambda +1 = \prod_^n (1+\lambda g_i) . Tahani and Keller as well as Wang and Klir have shown that once the densities are known, it is possible to use the previous
polynomial In mathematics, a polynomial is a Expression (mathematics), mathematical expression consisting of indeterminate (variable), indeterminates (also called variable (mathematics), variables) and coefficients, that involves only the operations of addit ...
to obtain the values of \lambda uniquely.


''k''-additive fuzzy measure

The ''k''-additive fuzzy measure limits the interaction between the subsets E \subseteq X to size , E, =k. This drastically reduces the number of variables needed to define the fuzzy measure, and as ''k'' can be anything from 1 (in which case the fuzzy measure is additive) to X, it allows for a compromise between modelling ability and simplicity.


Definition

A discrete fuzzy measure ''g'' on a set X is called ''k-additive'' ( 1 \leq k \leq , \mathbf, ) if its Möbius representation verifies M(E) = 0 , whenever , E, > k for any E \subseteq \mathbf , and there exists a subset ''F'' with ''k'' elements such that M(F) \neq 0 .


Shapley and interaction indices

In
game theory Game theory is the study of mathematical models of strategic interactions. It has applications in many fields of social science, and is used extensively in economics, logic, systems science and computer science. Initially, game theory addressed ...
, the Shapley value or Shapley index is used to indicate the weight of a game. Shapley values can be calculated for fuzzy measures in order to give some indication of the importance of each singleton. In the case of additive fuzzy measures, the Shapley value will be the same as each singleton. For a given fuzzy measure ''g'', and , \mathbf, =n, the Shapley index for every i,\dots,n \in X is: : \phi (i) = \sum_ \frac (E \cup \) - g(E) The Shapley value is the vector \mathbf(g) = (\psi(1),\dots,\psi(n)).


See also

*
Probability theory Probability theory or probability calculus is the branch of mathematics concerned with probability. Although there are several different probability interpretations, probability theory treats the concept in a rigorous mathematical manner by expre ...
* Possibility theory


References


Further reading

* Beliakov, Pradera and Calvo, ''Aggregation Functions: A Guide for Practitioners'', Springer, New York 2007. * Wang, Zhenyuan, and, George J. Klir, ''Fuzzy Measure Theory'', Plenum Press, New York, 1991.


External links


Fuzzy Measure Theory at Fuzzy Image Processing
{{Webarchive, url=https://web.archive.org/web/20190630034036/http://pami.uwaterloo.ca/tizhoosh/measure.htm , date=2019-06-30 Exotic probabilities Measure theory Fuzzy logic