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Supervised Spoken Document Summarization Jointly Considering Utterance Importance and Redundancy by Structured Support Vector Machine

机译:结构化支持向量机联合考虑话语重要性和冗余性的有监督口语文摘

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In extractive spoken document summarization, it is desired to select important utterances from documents to construct the summary while avoiding redundancy among the selected utterances, but it is not easy to balance the two different goals. In this paper, a supervised spoken document summarization approach is proposed based on structured support vector machine (SVM), in which the above two goals are joindy considered during training. A set of parameters not only describing the ways to evaluate the importance of the utterances but minimizing the redundancy is directly learned from the training set. Encouraging results were obtained on a lecture corpus in the preliminary experiments.
机译:在摘录的语音文档摘要中,期望从文档中选择重要的语音以构造摘要,同时避免所选择的语音之间的冗余,但是要平衡两个不同的目标并不容易。本文提出了一种基于结构化支持向量机(SVM)的监督口语总结方法,其中在训练过程中考虑了以上两个目标。可以从训练集中直接学习一组参数,这些参数不仅描述评估发声的重要性的方法,而且使冗余最小化。在初步实验中,通过演讲语料库获得了令人鼓舞的结果。

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