Pontificia Universidad Católica de Chile Pontificia Universidad Católica de Chile
Peralta B., Saavedra A., Caro L., Soto A. (2019)

Mixture of Experts with Entropic Regularization for Data Classification

Revista : Entropy
Volumen : 21
Número : 2
Páginas : 190
Tipo de publicación : ISI Ir a publicación

Abstract

Today, there is growing interest in the automatic classification of a variety of tasks, such as weather forecasting, product recommendations, intrusion detection, and people recognition. “Mixture-of-experts” is a well-known classification technique; it is a probabilistic model consisting of local expert classifiers weighted by a gate network that is typically based on softmax functions, combined with learnable complex patterns in data. In this scheme, one data point is influenced by only one expert; as a result, the training process can be misguided in real datasets for which complex data need to be explained by multiple experts. In this work, we propose a variant of the regular mixture-of-experts model. In the proposed model, the cost classification is penalized by the Shannon entropy of the gating network in order to avoid a “winner-takes-all” output for the gating network. Experiments show the advantage of our approach using several real datasets, with improvements in mean accuracy of 3–6% in some datasets. In future work, we plan to embed feature selection into this model.