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DC optimization for constructing discrete Sugeno integrals and learning nonadditive measures

Version 2 2024-06-04, 03:30
Version 1 2020-01-08, 09:06
journal contribution
posted on 2024-06-04, 03:30 authored by Gleb BeliakovGleb Beliakov, M Gagolewski, Simon JamesSimon James
Defined solely by means of order-theoretic operations meet (min) and join (max), weighted lattice polynomial functions are particularly useful for modelling data on an ordinal scale. A special case, the discrete Sugeno integral, defined with respect to a nonadditive measure (a capacity), enables accounting for the interdependencies between input variables. However, until recently the problem of identifying the fuzzy measure values with respect to various objectives and requirements has not received a great deal of attention. By expressing the learning problem as the difference of convex functions, we are able to apply DC (difference of convex) optimization methods. Here we formulate one of the global optimization steps as a local linear programming problem and investigate the improvement under different conditions.

History

Journal

Optimization

Volume

69

Pagination

2515-2534

Location

Abingdon, Eng.

ISSN

0233-1934

eISSN

1029-4945

Language

English

Publication classification

C1 Refereed article in a scholarly journal

Issue

12

Publisher

TAYLOR & FRANCIS LTD