Incorporating proximity information in relevance language modeling for extractive speech summarization.

Asia-Pacific Signal and Information Processing Association Annual Summit and Conference(2015)

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摘要
Extractive speech summarization refers to automatic selection of an indicative set of sentences from a spoken document so as to offer a concise digest covering the most salient aspects of the original document. The language modeling (LM) framework alongside the pseudo-relevance feedback (PRF) technique has emerged as a promising line of research for conducting extractive speech summarization in an unsupervised manner, showing some preliminary success. This paper extends such a general line of research and its main contributions are two-fold. First, we explore several effective formulations of proximity-based cues for use in the sentence modeling process involved in the LM-based summarization framework. Second, the utilities of the methods instantiated from the LM-based summarization framework and several well-practiced state-of-the-art methods are analyzed and compared extensively. The empirical results suggest the effectiveness of our methods.
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关键词
proximity information,relevance language modeling,extractive speech summarization,automatic sentence selection,spoken document,pseudorelevance feedback technique,proximity-based cues,LM-based summarization framework
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