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Monotone approximation of aggregation operators using least squares splines

journal contribution
posted on 2002-01-01, 00:00 authored by Gleb BeliakovGleb Beliakov
The need for monotone approximation of scattered data often arises in many problems of regression, when the monotonicity is semantically important. One such domain is fuzzy set theory, where membership functions and aggregation operators are order preserving. Least squares polynomial splines provide great flexbility when modeling non-linear functions, but may fail to be monotone. Linear restrictions on spline coefficients provide necessary and sufficient conditions for spline monotonicity. The basis for splines is selected in such a way that these restrictions take an especially simple form. The resulting non-negative least squares problem can be solved by a variety of standard proven techniques. Additional interpolation requirements can also be imposed in the same framework. The method is applied to fuzzy systems, where membership functions and aggregation operators are constructed from empirical data.

History

Journal

International journal of uncertainty, fuzziness, and knowledge-based systems

Volume

10

Issue

6

Pagination

659 - 676

Publisher

World Scientific

Location

Singapore

ISSN

0218-4885

eISSN

1793-6411

Language

eng

Notes

Electronic version of an article published as International Journal of Uncertainty, Fuzziness and Knowledge-Based Systems Vol. 10, No. 6 (2002) 659-676. DOI: 10.1142/S0218488502001715 © 2002, World Scientific Publishing Company http://www.worldscinet.com/ijufks/ijufks.shtml

Publication classification

C1 Refereed article in a scholarly journal

Copyright notice

2002, World Scientific Publishing