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Scaling-invariant description of dependence between fuzzy variables: Towards a fuzzy version of copulas

机译:模糊变量之间的依存关系的尺度不变描述:趋向于copulas的模糊版本

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摘要

To get a general description of dependence between n fuzzy variables x,..., X, we can use the membership function μ(χ,..., x) that describes, for each possible tuple of values (x,..., x) to which extent this tuple is possible. There are, however, many different ways to elicit these degrees. Different elicitations lead, in general, to different numerical values of these degrees - although, ideally, tuples which have a higher degree of possibility in one scale should have a higher degree in other scales as well. It is therefore desirable to come up with a description of the dependence between fuzzy variables that does not depend on the corresponding procedure and, thus, has the same form in different scales. In this paper, by using an analogy with the notion of copulas in statistics, we come up with such a scaling-invariant description. Our main idea is to use marginal membership functions μ (x) = max μ(x,..., x, x, x,..., x) and then describe the relationship between the fuzzy variables x,..., x by selecting, for some i from 1 to n, a function r(x,..., x) for which, for all the tuples (x,..., x), we have μ(x,..., x)= μ(r(x,..., x)).
机译:为了获得n个模糊变量x,...,X之间的依存关系的一般描述,我们可以使用隶属函数μ(χ,...,x)为每个可能的值(x,... ,x)该元组在多大程度上可能。但是,有许多不同的方法可以得出这些学位。通常,不同的启发会导致这些度数的数值不同-尽管理想情况下,在一个尺度上具有较高可能性的元组在其他尺度上也应具有较高的程度。因此,需要对不依赖于相应过程的模糊变量之间的依赖关系进行描述,因此具有不同比例的相同形式。在本文中,通过在统计中使用类比的概念进行类比,我们得出了这样一种定标不变的描述。我们的主要思想是使用边际隶属函数μ(x)= maxμ(x,...,x,x,x,...,x)然后描述模糊变量x,...,之间的关系通过为1到n中的一些i选择一个函数r(x,...,x),对于所有元组(x,...,x),我们都有μ(x,... ,x)=μ(r(x,...,x))。

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