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Published in: International Journal of Machine Learning and Cybernetics 9/2022

09-03-2022 | Original Article

A Gaussian RBM with binary auxiliary units

Authors: Jian Zhang, Shifei Ding, Tongfeng Sun, Lili Guo

Published in: International Journal of Machine Learning and Cybernetics | Issue 9/2022

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Abstract

Restricted Boltzmann Machines (RBM) have been widely applied in image processing. For RBM-based models on image recognition and image generation tasks, extracting expressive real-valued features and alleviating the overfitting problem are extremely important. In this paper, we propose a Gaussian Restricted Boltzmann Machine with binary Auxiliary units (GARBM), which designs binary auxiliary units in its visible layer and constructs parameterized real-valued features in its hidden layer. Specifically, based on the designed energy function in GARBM, activated auxiliary units are directly used to control probabilities of visible units and hidden units to extract real-valued features. Moreover, auxiliary units and their resulting feature selection mechanism not only alleviate the “gradient-variance” problem, but also provide certain randomness to other units to alleviate overfitting without introducing more hyperparameters. To build more effective deep models, we propose GARBM-based deep neural networks, and the effectiveness of proposed neural networks is verified in experiments.

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Metadata
Title
A Gaussian RBM with binary auxiliary units
Authors
Jian Zhang
Shifei Ding
Tongfeng Sun
Lili Guo
Publication date
09-03-2022
Publisher
Springer Berlin Heidelberg
Published in
International Journal of Machine Learning and Cybernetics / Issue 9/2022
Print ISSN: 1868-8071
Electronic ISSN: 1868-808X
DOI
https://doi.org/10.1007/s13042-022-01534-6

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