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Extractive Speech Summarization - From the View of Decision Theory

机译:提取语言摘要 - 从决策理论看

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Extractive speech summarization can be thought of as a decision-making process where the summarizer attempts to select a subset of informative sentences from the original document. Meanwhile, a sentence being selected as part of a summary is typically determined by three primary factors: significance, relevance and redundancy. To meet these specifications, we recently presented a novel probabilistic framework stemming from the Bayes decision theory for extractive speech summarization. It not only inherits the merits of several existing summarization techniques but also provides a flexible mechanism to render the redundancy and coherence relationships among sentences and between sentences and the whole document, respectively. In this paper, we propose several new approaches to the ranking strategy and modeling paradigm involved in such a framework. All experiments reported were carried out on a broadcast news speech summarization task; very promising results were demonstrated.
机译:提取语音摘要可以被认为是决策过程,其中总结程序试图从原始文档中选择一个信息句子的子集。同时,作为摘要的一部分被选择的句子通常由三个主要因素决定:意义,相关性和冗余。为满足这些规范,我们最近介绍了贝斯特语概述的贝叶斯决策理论的新颖概率框架。它不仅继承了几种现有摘要技术的优点,还提供了一种灵活的机制,以便分别呈现句子和句子和整个文档之间的冗余和连贯关系。在本文中,我们提出了涉及此类框架的排名策略和建模范式的新方法。报告的所有实验都是在广播新闻演讲摘要任务上进行的;非常有前途的结果被证明。

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