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Growing a Deep Neural Network Acoustic Model with Singular Value Decomposition

机译:扩展具有奇异值分解的深层神经网络声学模型

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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.
机译:奇异值分解(SVD)允许将连接深层神经网络(DNN)中两层的权重矩阵分解为两个较小的矩阵。在本文中,我们展示了如何使用SVD初始化两个原始层之间的新层。使用SVD重组,我们可以提高基于DNN的语音识别系统的单词错误率(WER),同时减少其参数数量。在德国测试中,WER从16.61%提高到16.16%,同时参数数量从1730万减少到1455万。当应用于在线实时语音识别系统时,该方法显着提高了其实时因子,同时也略微降低了其WER。

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