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Language model switching based on topic detection for dialog speech recognition

机译:基于主题检测的语言模型切换用于对话语音识别

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摘要

An efficient, scalable speech recognition architecture is proposed for multi-domain dialog systems by combining topic detection and topic-dependent language modeling. The inferred domain is automatically detected from the user's utterance, and speech recognition is then performed with an appropriate domain-dependent language model. The architecture improves accuracy and efficiency over current approaches and is scaleable to a large number of domains. In this paper, unigram likelihood and SVM based topic detection methods are compared. A novel framework using a multi-layer hierarchy of language models is also introduced in order to improve robustness against topic detection errors. The proposed system provides a relative reduction in WER of 10.3% over a single language model system. Furthermore, it achieves an accuracy that is comparable to using multiple language models in parallel while requiring only a fraction of the computational cost.
机译:通过结合主题检测和主题相关的语言建模,为多域对话系统提出了一种高效,可扩展的语音识别体系结构。根据用户的话语自动检测出推断出的域,然后使用与域相关的适当语言模型执行语音识别。与当前方法相比,该体系结构提高了准确性和效率,并且可扩展到众多领域。在本文中,比较了字母组合似然法和基于SVM的主题检测方法。为了提高针对主题检测错误的鲁棒性,还引入了使用语言模型的多层层次结构的新颖框架。与单一语言模型系统相比,建议的系统可将WER相对降低10.3%。此外,它实现了与并行使用多种语言模型相当的精度,而只需要计算成本的一小部分。

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