Language Modeling Using PLSA-Based Topic HMM
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概要
- 論文の詳細を見る
In this paper, we propose a PLSA-based language model for sports-related live speech. This model is implemented using a unigram rescaling technique that combines a topic model and an n-gram. In the conventional method, unigram rescaling is performed with a topic distribution estimated from a recognized transcription history. This method can improve the performance, but it cannot express topic transition. By incorporating the concept of topic transition, it is expected that the recognition performance will be improved. Thus, the proposed method employs a “Topic HMM” instead of a history to estimate the topic distribution. The Topic HMM is an Ergodic HMM that expresses typical topic distributions as well as topic transition probabilities. Word accuracy results from our experiments confirmed the superiority of the proposed method over a trigram and a PLSA-based conventional method that uses a recognized history.
- (社)電子情報通信学会の論文
- 2008-03-01
著者
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Ariki Yasuo
Kobe Univ. Kobe‐shi Jpn
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SAKO Atsushi
Graduate School of Science and Technology, Kobe University
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TAKIGUCHI Tetsuya
Graduate School of Science and Technology, Kobe University
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ARIKI Yasuo
Graduate School of Science and Technology, Kobe University
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Takiguchi Tetsuya
Graduate School Of Engineering Kobe University
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Sako Atsushi
Graduate School Of Science And Technology Kobe University
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Ariki Yasuo
Graduate School Of Science And Technology Kobe University
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Takiguchi Tetsuya
Graduate School Of Science And Technology Kobe University
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