Dual-Space Re-ranking Model for Efficient Document Retrieval, User Modeling and Adaptation

J. Staš, D. Hládek, M. Lojka, J. Juhár
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Abstract

The increasing demand for the performance improvement and robustness of automatic transcription of spontaneous speech in Slovak forces us to look for the advanced methods of adaptation of acoustic and language models to the user-specific voice characteristics and the topic of their speech. One of the ways how to increase the domain robustness of language models is to improve the process of retrieving text documents relevant to the current topic of the speech and use them to adapt the existing background language model. This paper focuses on the analysis, design and implementation of a new dual-space re-ranking model for document retrieval, adaptation of language models to the current topic of speech and personalization of speech recognition system. The experimental results of the proposed dual-space reranking model based on the averaging coefficients produced by latent semantic indexing and paragraph vectors ranking models show an additional 1% relative improvement in word error rate against the efficiency of single-space model ranking.
面向高效文档检索、用户建模和自适应的双空间重排序模型
对斯洛伐克语自发语音自动转录的性能改进和鲁棒性的日益增长的需求迫使我们寻找适应用户特定语音特征和语音主题的声学和语言模型的先进方法。提高语言模型领域鲁棒性的方法之一是改进检索与当前演讲主题相关的文本文档的过程,并利用它们来适应现有的背景语言模型。本文重点分析、设计和实现了一种新的双空间重新排序模型,用于文档检索、语言模型适应当前语音主题和语音识别系统的个性化。实验结果表明,基于潜在语义索引和段落向量排序模型产生的平均系数的双空间重排序模型,相对于单空间模型排序的效率,单词错误率提高了1%。
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