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Using Relevant Public Posts to Enhance News Article Summarization

机译:使用相关的公开职位提升新闻文章概述

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A news article summary usually consists of 2-3 key sentences that reflect the gist of that news article. In this paper we explore using public posts following a new article to improve automatic summary generation for the news article. We propose different approaches to incorporate information from public posts, including using frequency information from the posts to re-estimate bigram weights in the ILP-based summarization model and to re-weight a dependency tree edge's importance for sentence compression, directly selecting sentences from posts as the final summary, and finally a strategy to combine the summarization results generated from news articles and posts. Our experiments on data collected from Facebook show that relevant public posts provide useful information and can be effectively leveraged to improve news article summarization results.
机译:新闻文章摘要通常由2-3个关键句子组成,反映了该新闻文章的要点。在本文中,我们浏览了一篇新文章之后的公开职位,以改善新闻文章的自动摘要一代。我们提出了不同的方法,以将信息纳入公共帖子,包括使用帖子中的频率信息在基于ILP的摘要模型中重新估计Bigram权重,并重量依赖树边缘对句子压缩的重要性,直接从帖子中选择句子作为最后的摘要,最后将策略结合在新闻文章和职位中产生的摘要结果。我们对从Facebook收集的数据的实验表明,相关的公共职位提供了有用的信息,可以有效地利用,以改善新闻文章摘要结果。

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