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Aggregation functions based on penalties

journal contribution
posted on 2010-05-01, 00:00 authored by T Calvo, Gleb BeliakovGleb Beliakov
This article studies a large class of averaging aggregation functions based on minimizing a distance from the vector of inputs, or equivalently, minimizing a penalty imposed for deviations of individual inputs from the aggregated value. We provide a systematization of various types of penalty based aggregation functions, and show how many special cases arise as the result. We show how new aggregation functions can be constructed either analytically or numerically and provide many examples. We establish connection with the maximum likelihood principle, and present tools for averaging experimental noisy data with distinct noise distributions.

History

Journal

Fuzzy sets and systems

Volume

161

Issue

10

Pagination

1420 - 1436

Publisher

Elsevier

Location

Amsterdam, Netherlands

ISSN

0165-0114

eISSN

1872-6801

Language

eng

Notes

Reproduced with the specific permission of the copyright owner.

Publication classification

C1 Refereed article in a scholarly journal

Copyright notice

2009, Elsevier B.V.