Title of article
Towards adaptive learning with improved convergence of deep belief networks on graphics processing units
Author/Authors
Lopes، نويسنده , , Noel and Ribeiro، نويسنده , , Bernardete، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2014
Pages
14
From page
114
To page
127
Abstract
In this paper we focus on two complementary approaches to significantly decrease pre-training time of a deep belief network (DBN). First, we propose an adaptive step size technique to enhance the convergence of the contrastive divergence (CD) algorithm, thereby reducing the number of epochs to train the restricted Boltzmann machine (RBM) that supports the DBN infrastructure. Second, we present a highly scalable graphics processing unit (GPU) parallel implementation of the CD-k algorithm, which boosts notably the training speed. Additionally, extensive experiments are conducted on the MNIST and the HHreco databases. The results suggest that the maximum useful depth of a DBN is related to the number and quality of the training samples. Moreover, it was found that the lower-level layer plays a fundamental role for building successful DBN models. Furthermore, the results contradict the pre-conceived idea that all the layers should be pre-trained. Finally, it is shown that by incorporating multiple back-propagation (MBP) layers, the DBNs generalization capability is remarkably improved.
Keywords
deep learning , Deep belief networks , Restricted Boltzmann machines , Contrastive divergence , Adaptive step size , GPU computing
Journal title
PATTERN RECOGNITION
Serial Year
2014
Journal title
PATTERN RECOGNITION
Record number
1735771
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