Direct product based deep belief networks for automatic speech recognition

P. Fousek, Steven J. Rennie, Pierre L. Dognin, V. Goel
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引用次数: 3

Abstract

In this paper, we present new methods for parameterizing the connections of neural networks using sums of direct products. We show that low rank parameterizations of weight matrices are a subset of this set, and explore the theoretical and practical benefits of representing weight matrices using sums of Kronecker products. ASR results on a 50 hr subset of the English Broadcast News corpus indicate that the approach is promising. In particular, we show that a factorial network with more than 150 times less parameters in its bottom layer than its standard unconstrained counterpart suffers minimal WER degradation, and that by using sums of Kronecker products, we can close the gap in WER performance while maintaining very significant parameter savings. In addition, direct product DBNs consistently outperform standard DBNs with the same number of parameters. These results have important implications for research on deep belief networks (DBNs). They imply that we should be able to train neural networks with thousands of neurons and minimal restrictions much more rapidly than is currently possible, and that by using sums of direct products, it will be possible to train neural networks with literally millions of neurons tractably-an exciting prospect.
直接产品为基础的深度信念网络自动语音识别
本文提出了用直接积和来参数化神经网络连接的新方法。我们证明了低秩参数化的权重矩阵是这个集合的一个子集,并探讨了使用Kronecker积和表示权重矩阵的理论和实际好处。50小时英语广播新闻语料库子集的ASR结果表明,该方法是有前途的。特别是,我们表明,底层参数比标准无约束网络少150倍的阶乘网络的WER退化最小,并且通过使用Kronecker积的总和,我们可以缩小WER性能的差距,同时保持非常显著的参数节省。此外,在相同参数数量的情况下,直接产品dbn的性能始终优于标准dbn。这些结果对深度信念网络(DBNs)的研究具有重要意义。他们暗示,我们应该能够以比目前更快的速度训练具有数千个神经元和最小限制的神经网络,并且通过使用直接积和,将有可能训练具有数百万个神经元的神经网络,这是一个令人兴奋的前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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