Generalized Large-Context Language Models Based on Forward-Backward Hierarchical Recurrent Encoder-Decoder Models

Ryo Masumura, Mana Ihori, Tomohiro Tanaka, Itsumi Saito, Kyosuke Nishida, T. Oba
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引用次数: 3

Abstract

This paper presents a generalized form of large-context language models (LCLMs) that can take linguistic contexts beyond utterance boundaries into consideration. In discourse-level and conversation-level automatic speech recognition (ASR) tasks, which have to handle a series of utterances, it is essential to capture long-range linguistic contexts beyond utterance boundaries. The LCLMs of previous studies mainly focused on utilizing past contexts, and none fully utilized future contexts because LMs typically process words in a time-ordered manner. Our key idea is to introduce the LCLMs into the situation where ASR results of the whole series of utterances are given by a first decoding pass. This situation makes it possible for the LCLMs to leverage future contexts. In this paper, we propose generalized LCLMs (GLCLMs) based on forward-backward hierarchical recurrent encoder-decoder models in which generative probabilities of individual utterances are computed by leveraging not only past contexts but also future contexts beyond utterance boundaries. In order to efficiently introduce GLCLMs to ASR, we also propose a global-context iterative rescoring method that repeatedly rescores the ASR hypotheses of an individual utterance by using surrounding ASR hypotheses. Experiments on discourse-level ASR tasks demonstrate the effectiveness of our GLCLM approach.
基于前向向后分层循环编码器-解码器模型的广义大上下文语言模型
本文提出了一种广义的大语境语言模型(LCLMs),它可以考虑话语边界以外的语言语境。在话语级和会话级自动语音识别(ASR)任务中,必须处理一系列的话语,捕捉超越话语边界的远程语言语境是至关重要的。以往的lclm研究主要集中于对过去语境的利用,由于lclm通常以时间顺序的方式处理单词,因此没有充分利用将来语境。我们的关键思想是将lclm引入到整个系列话语的ASR结果由第一次解码通过的情况中。这种情况使得lclm能够利用未来的上下文。在本文中,我们提出了基于前向向后分层循环编码器-解码器模型的广义lclm (glclm),其中单个话语的生成概率不仅通过利用过去上下文而且通过利用超越话语边界的未来上下文来计算。为了有效地将glclm引入到ASR中,我们还提出了一种全局上下文迭代评分方法,该方法通过使用周围的ASR假设来重复重建单个话语的ASR假设。在语篇级ASR任务上的实验证明了GLCLM方法的有效性。
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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