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EFFECTIVE PSEUDO-RELEVANCE FEEDBACK FOR LANGUAGE MODELING IN SPEECH RECOGNITION

机译:语音识别中语言建模的有效伪相关反馈

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摘要

A part and parcel of any automatic speech recognition (ASR) system is language modeling (LM), which helps to constrain the acoustic analysis, guide the search through multiple candidate word strings, and quantify the acceptability of the final output hypothesis given an input utterance. Despite the fact that the n-gram model remains the predominant one, a number of novel and ingenious LM methods have been developed to complement or be used in place of the n-gram model. A more recent line of research is to leverage information cues gleaned from pseudo-relevance feedback (PRF) to derive an utterance-regularized language model for complementing the n-gram model. This paper presents a continuation of this general line of research and its main contribution is two-fold. First, we explore an alternative and more efficient formulation to construct such an utterance-regularized language model for ASR. Second, the utilities of various utterance-regularized language models are analyzed and compared extensively. Empirical experiments on a large vocabulary continuous speech recognition (LVCSR) task demonstrate that our proposed language models can offer substantial improvements over the baseline n-gram system, and achieve performance competitive to, or better than, some state-of-the-art language models.
机译:任何自动语音识别(ASR)系统的部分和地块是语言建模(LM),有助于限制声学分析,指导通过多个候选字符串引导搜索,并定量给出输入话语的最终输出假设的可接受性。尽管N-GRAM模型仍然是主要的,但已经开发了许多新颖和巧妙的LM方法来补充或用于代替N-GRAM模型。更新的研究线是利用从伪相关反馈(PRF)收集的信息线索来推导出用于补充N-GRAM模型的话语正规语言模型。本文提出了这一普通研究的延续,其主要贡献是两倍。首先,我们探索替代方便,更高效的配方,用于构建ASR的这种话语正规语言模型。其次,分析了各种话语 - 正规语言模型的实用程序,并广泛地比较。大型词汇连续语音识别(LVCSR)任务的实证实验表明,我们的拟议语言模型可以通过基线N-GRAM系统提供大量改进,并实现比某些最先进的语言竞争或更好的性能楷模。

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