Sequence training and adaptation of highway deep neural networks

Liang Lu
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引用次数: 6

Abstract

Highway deep neural network (HDNN) is a type of depth-gated feedforward neural network, which has shown to be easier to train with more hidden layers and also generalise better compared to conventional plain deep neural networks (DNNs). Previously, we investigated a structured HDNN architecture for speech recognition, in which the two gate functions were tied across all the hidden layers, and we were able to train a much smaller model without sacrificing the recognition accuracy. In this paper, we carry on the study of this architecture with sequence-discriminative training criterion and speaker adaptation techniques on the AMI meeting speech recognition corpus. We show that these two techniques improve speech recognition accuracy on top of the model trained with the cross entropy criterion. Furthermore, we demonstrate that the two gate functions that are tied across all the hidden layers are able to control the information flow over the whole network, and we can achieve considerable improvements by only updating these gate functions in both sequence training and adaptation experiments.
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公路深度神经网络的序列训练与自适应
高速公路深度神经网络(HDNN)是一种深度门控前馈神经网络,与传统的普通深度神经网络(dnn)相比,使用更多隐藏层更容易训练,并且泛化效果更好。之前,我们研究了用于语音识别的结构化HDNN架构,其中两个门函数在所有隐藏层上捆绑,我们能够在不牺牲识别精度的情况下训练更小的模型。本文以AMI会议语音识别语料库为研究对象,采用顺序判别训练准则和说话人自适应技术对该体系结构进行了研究。我们证明了这两种技术在交叉熵准则训练的模型的基础上提高了语音识别的准确性。此外,我们证明了连接在所有隐藏层上的两个门函数能够控制整个网络的信息流,并且我们可以通过在序列训练和自适应实验中仅更新这些门函数来获得相当大的改进。
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