74

On learning capacities of Sugeno integrals with systems of fuzzy relational equations

IEEE International Conference on Fuzzy Systems (FUZZ-IEEE), 2024
Ismaïl Baaj
Main:8 Pages
Bibliography:1 Pages
Abstract

In this article, we introduce a method for learning a capacity underlying a Sugeno integral according to training data based on systems of fuzzy relational equations. To the training data, we associate two systems of equations: a maxmin\max-\min system and a minmax\min-\max system. By solving these two systems (in the case that they are consistent) using Sanchez's results, we show that we can directly obtain the extremal capacities representing the training data. By reducing the maxmin\max-\min (resp. minmax\min-\max) system of equations to subsets of criteria of cardinality less than or equal to qq (resp. of cardinality greater than or equal to nqn-q), where nn is the number of criteria, we give a sufficient condition for deducing, from its potential greatest solution (resp. its potential lowest solution), a qq-maxitive (resp. qq-minitive) capacity. Finally, if these two reduced systems of equations are inconsistent, we show how to obtain the greatest approximate qq-maxitive capacity and the lowest approximate qq-minitive capacity, using recent results to handle the inconsistency of systems of fuzzy relational equations.

View on arXiv
Comments on this paper