Title
Growing a Deep Neural Network Acoustic Model with Singular Value Decomposition
Abstract
Singular Value Decomposition (SVD) allows the weight matrix connecting two layers in a deep neural network (DNN) to be decomposed into two smaller matrices. In this paper we show how SVD can be used to initialise a new layer between the two original layers. Using SVD restructuring we can improve the word error rate (WER) of DNN based speech recognition systems while at the same time reducing their number of parameters. On a German test this resulted in a WER improvement from 16.61% to 16.16% while the number of parameters were reduced from 17.3 million to 14.55 million. When applied to an online real time speech recognition system the approach noticeable improved its real time factor while at the same time also slighty reducing its WER.
Year
Venue
Field
2016
Speech Communication; 12. ITG Symposium
Applied mathematics,Singular value decomposition,Computer science,Artificial neural network,Acoustic model
DocType
ISBN
Citations 
Conference
978-3-8007-4275-2
0
PageRank 
References 
Authors
0.34
0
5
Name
Order
Citations
PageRank
Kevin Kilgour15411.00
Igor Tseyzer220.77
Thai-Son Nguyen319723.54
Sebastian Stüker416232.58
Alex Waibel563431980.68