Mutual Information-based RBM Neural Networks


Autoria(s): Peng, Kang-Hao
Contribuinte(s)

Chellappa, Rama

Digital Repository at the University of Maryland

University of Maryland (College Park, Md.)

Electrical Engineering

Data(s)

15/09/2016

15/09/2016

2016

Resumo

(Deep) neural networks are increasingly being used for various computer vision and pattern recognition tasks due to their strong ability to learn highly discriminative features. However, quantitative analysis of their classication ability and design philosophies are still nebulous. In this work, we use information theory to analyze the concatenated restricted Boltzmann machines (RBMs) and propose a mutual information-based RBM neural networks (MI-RBM). We develop a novel pretraining algorithm to maximize the mutual information between RBMs. Extensive experimental results on various classication tasks show the eectiveness of the proposed approach.

Identificador

doi:10.13016/M25V4B

http://hdl.handle.net/1903/18838

Idioma(s)

en

Palavras-Chave #Electrical engineering #Computer science #Deep Learning #Mutual Information #Neural Network #Restricted Boltzmann Machine
Tipo

Thesis