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Utterance-level latent topic transition modeling for spoken documents and its application in automatic summarization

机译:语音文档的话语级潜在主题转移建模及其在自动摘要中的应用

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In this paper, we propose to use an utterance-level latent topic transition model to estimate the latent topics behind the utterances, and test the performance of such model in extractive speech summarization. In this model, the latent topic weights behind an utterance are estimated, and these topic weights evolve from an utterance to the next in a spoken document based on a topic transition function represented by a matrix. We explore different ways of obtaining such topic transition matrices used in the model, and find using a set of matrices estimated with utterances clustered from a training spoken document set is very useful. This model was shown to be able to offer extra performance improvement when used with the popularly used Probability Latent Semantic Analysis (PLSA) in preliminary experiments on speech summarization.
机译:在本文中,我们建议使用话语级潜在话题转移模型来估计话语背后的潜在话题,并测试这种模型在提取语音摘要中的性能。在该模型中,估计了语音背后的潜在主题权重,并且这些主题权重基于矩阵表示的主题转换函数从语音中的语音发展到语音文档中的下一主题。我们探索了获得模型中使用的此类主题转换矩阵的不同方法,并发现使用从培训口头文档集中聚集的话语估计的一组矩阵非常有用。在语音摘要的初步实验中,与流行的概率潜在语义分析(PLSA)一起使用时,该模型显示出能够提供额外的性能改进。

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