文本-音素映射中双向输入上下文依赖的递归神经网络

E. B. Bilcu, J. Astola, J. Saarinen
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引用次数: 0

摘要

在文献中存在的许多神经网络架构中,递归神经网络(RNN)因其处理时空问题的能力而受到特别关注。然而,在早期发表的一篇论文中,作者表明,当应用于将文本流转换为语音转录的特定问题时,RNN在音素准确性方面表现不佳。这是因为RNN包含字母之间的弱左侧上下文依赖,而不包括右侧上下文依赖。在本文中,我们研究了RNN在输入时包含相邻字母之间的上下文信息的行为。给出了在文本-音素映射的情况下,具有两侧输入上下文依赖、多层感知和RNN的RNN在音素精度方面的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recurrent neural network with both side input context dependence for text-to-phoneme mapping
Among many neural network architectures that exist in the literature, the recurrent neural networks (RNN's) are of special interest due to their ability to deal with spatial temporal problems. However, in an earlier published paper, the authors shown that RNN's have poor performance in terms of phoneme accuracy when applied to the specific problem of converting text streams into their phonetic transcriptions. This is due to the fact that RNN's contains a weak left side context dependence between letters and the right side context dependence is not included. In this paper, we study the behavior of RNN that includes the context information between adjacent letters at the input. The results in terms of phoneme accuracy, for the RNN with both side input context dependence, multilayer perception and RNN, in the context of text-to-phoneme mapping, are shown.
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