Fitting aggregation functions to data: part I-linearization and regularization


Autoria(s): Bartoszuk, Maciej; Beliakov, Gleb; Gagolewski, Marek; James, Simon
Contribuinte(s)

Carvalho, Joao Paulo

Lesot, Marie-Jeanne

Kaymak, Uzay

Vieira, Susana

Bouchon-Meunier, Bernadette

Yager, Ronald R.

Data(s)

01/01/2016

Resumo

The use of supervised learning techniques for fitting weights and/or generator functions of weighted quasi-arithmetic means – a special class of idempotent and nondecreasing aggregation functions – to empirical data has already been considered in a number of papers. Nevertheless, there are still some important issues that have not been discussed in the literature yet. In the first part of this two-part contribution we deal with the concept of regularization, a quite standard technique from machine learning applied so as to increase the fit quality on test and validation data samples. Due to the constraints on the weighting vector, it turns out that quite different methods can be used in the current framework, as compared to regression models. Moreover, it is worth noting that so far fitting weighted quasi-arithmetic means to empirical data has only been performed approximately, via the so-called linearization technique. In this paper we consider exact solutions to such special optimization tasks and indicate cases where linearization leads to much worse solutions.

Identificador

http://hdl.handle.net/10536/DRO/DU:30085790

Idioma(s)

eng

Publicador

Springer

Relação

http://dro.deakin.edu.au/eserv/DU:30085790/beliakov-fittingaggregation-evid-2016.pdf

Direitos

2016, Springer

Palavras-Chave #aggregation functions #weighted quasi-arithmetic means #least squares fitting #regularization #linearization
Tipo

Book Chapter