低资源语言关键词搜索中的混淆建模实证研究

M. Saraçlar, A. Sethy, B. Ramabhadran, L. Mangu, Jia Cui, Xiaodong Cui, Brian Kingsbury, Jonathan Mamou
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引用次数: 42

摘要

关键词搜索,在低资源语言的背景下,已经成为一个重要的研究领域。关键字搜索的主要方法是使用自动语音识别(ASR)作为前端来生成可索引的音频表示。这种方法的最大缺点在于它无法处理不在ASR系统输出中的词汇表外的单词和查询术语。在本文中,我们提出了一项实证研究,评估了基于使用混淆模型作为查询扩展技术来解决这个问题的各种方法。我们使用一系列混淆模型展示了四种语言的结果,这些模型通过最大术语加权值(MTWV)度量指标显著改善了关键字搜索性能。
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An empirical study of confusion modeling in keyword search for low resource languages
Keyword search, in the context of low resource languages, has emerged as a key area of research. The dominant approach in keyword search is to use Automatic Speech Recognition (ASR) as a front end to produce a representation of audio that can be indexed. The biggest drawback of this approach lies in its the inability to deal with out-of-vocabulary words and query terms that are not in the ASR system output. In this paper we present an empirical study evaluating various approaches based on using confusion models as query expansion techniques to address this problem. We present results across four languages using a range of confusion models which lead to significant improvements in keyword search performance as measured by the Maximum Term Weighted Value (MTWV) metric.
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