Unsupervised Topic Modeling Approaches to Decision Summarization in Spoken Meetings

SIGDIAL '12: Proceedings of the 13th Annual Meeting of the Special Interest Group on Discourse and Dialogue(2016)

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摘要
We present a token-level decision summarization framework that utilizes the latent topic structures of utterances to identify "summary-worthy" words. Concretely, a series of unsupervised topic models is explored and experimental results show that fine-grained topic models, which discover topics at the utterance-level rather than the document-level, can better identify the gist of the decision-making process. Moreover, our proposed token-level summarization approach, which is able to remove redundancies within utterances, outperforms existing utterance ranking based summarization methods. Finally, context information is also investigated to add additional relevant information to the summary.
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关键词
fine-grained topic model,latent topic structure,proposed token-level summarization approach,summarization method,token-level decision summarization framework,unsupervised topic model,additional relevant information,context information,decision-making process,experimental result,Unsupervised topic modeling approach
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