RSHMM++ for extractive lecture speech summarization

J. Zhang, Shilei Huang, Pascale Fung
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引用次数: 12

Abstract

We propose an enhanced Rhetorical-State Hidden Markov Model (RSHMM++) for extracting hierarchical structural summaries from lecture speech. One of the most underutilized information in extractive summarization is rhetorical structure hidden in speech data. RSHMM++ automatically decodes this underlying information in order to provide better summaries. We show that RSHMM++ gives a 72.01% ROUGE-L F-measure, a 9.78% absolute increase in lecture speech summarization performance compared to the baseline system without using rhetorical information. We also propose Relaxed DTW for compiling reference summaries.
rshmm++用于抽取讲座演讲摘要
提出了一种改进的修辞状态隐马尔可夫模型(rshmm++),用于从演讲演讲中提取层次结构摘要。摘要提取中最容易被忽视的信息之一是隐藏在语音数据中的修辞结构。rshmm++会自动解码这些底层信息,以便提供更好的摘要。我们发现rshmm++给出了72.01%的ROUGE-L f测量值,与不使用修辞信息的基线系统相比,演讲演讲总结性能绝对提高了9.78%。我们还建议放宽DTW以编制参考摘要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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