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Investigation of Node Pruning Criteria for Neural Networks Model Compression with Non-Linear Function and Non-Uniform Network Topology

机译:非线性函数和非统一网络拓扑结构模型压缩节点修剪标准的研究

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This paper investigates node-pruning-based compression for non-uniform deep learning models such as acoustic models in automatic speech recognition (ASR). Node pruning for small footprint ASR has been well studied, but most studies assumed a sigmoid as an activation function and uniform or simple fully-connected neural networks without bypass connections. We propose a node pruning method that can be applied to non-sigmoid functions such as ReLU and that can deal with network topology related issues such as bypass connections. To deal with non-sigmoid functions, we extend a node entropy technique to estimate node activities. To cope with non-uniform network topology, we propose three criteria; inter-layer pairing, no bypass connection pruning, and layer-based pruning rate configuration. The proposed method as a combination of these four techniques and criteria was applied to compress a Kaldi's acoustic model with ReLU as a non-linear function, time delay neural networks (TDNN) and bypass connections inspired by residual networks. Experimental results showed that the proposed method achieved a 31% speed increase while maintaining the ASR accuracy to be comparable by taking network topology into consideration.
机译:本文研究节点修剪基于压缩不均匀的深度学习模型,例如在自动语音识别(ASR)的声学模型。用于小型脚印尺寸ASR节点修剪得到了很好的研究,但大多数研究假定S形作为激活函数和均匀的或简单的完全连接的神经网络没有旁路连接。我们建议,可应用于非乙状结肠功能,如RELU节点修剪方法和能够处理网络拓扑相关的问题,如旁路连接。为了应对非S型函数中,我们扩展节点熵技术来估计节点的活动。为应对非均匀网络拓扑结构,我们提出了三个标准;层间配对,没有旁路连接修剪,并且基于层的修剪速率配置。所提出的方法作为这些四种技术和标准的组合物施加RELU作为非线性函数来压缩Kaldi的声学模型,延时神经网络(TDNN),并通过网络残留启发旁路连接。实验结果表明,所提出的方法实现了速度增加31%,同时保持ASR准确度是通过采用网络拓扑考虑相媲美。

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