Robust expectation maximization learning algorithm for mixture of experts

Torres R.; Salas, R.; Allende, H.; Moraga, C.

Abstract

The Mixture of Experts (ME) model is a type of modular artificial neural network (MANN) specially suitable when the search space is stratified and whose architecture is composed by different kinds of networks which compete to learn several aspects of a complex problem. Training a ME architecture can be treated as a maximum likelihood estimation problem, where the Expectation Maximization (EM) algorithm decouples the estimation process in a manner that fits well with the modular structure of the ME architecture. However, the learning process relies on the data and so is the performance. When the data is exposed to outliers, the model is affected by being sensible to these deviations obtaining a poor performance as it is shown in this work. This paper proposes a Robust Expectation Maximization algorithm for learning a ME model (REM-ME) based on M-estimators. We show empirically that the REM-ME for these architectures prevents performance deterioration due to outliers and yields significantly faster convergence than other approaches. © Springer-Verlag Berlin Heidelberg 2003.

Más información

Título según WOS: Robust expectation maximization learning algorithm for mixture of experts
Título según SCOPUS: Robust expectation maximization learning algorithm for mixture of experts
Título de la Revista: LEARNING AND INTELLIGENT OPTIMIZATION, LION 15
Volumen: 2686
Editorial: SPRINGER INTERNATIONAL PUBLISHING AG
Fecha de publicación: 2003
Página de inicio: 238
Página final: 245
Idioma: English
Notas: ISI, SCOPUS