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Hotspots of news articles: Joint mining of news text social media to discover controversial points in news

机译:新闻热点:新闻文本和社交媒体的联合挖掘,以发现新闻中有争议的观点

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We propose and study a novel problem of mining news text and social media jointly to discover controversial points in news, which enables many applications such as highlighting controversial points in news articles for readers, revealing controversies in news and their trends over time, and quantifying the controversy of a news source. We design a controversy scoring function to discover the most controversial sentences in a news article by leveraging relevant comments in Twitter and comments on news web sites to assess the controversy of opinions about an issue mentioned in the news article. Multiple scoring strategies based on sentiment analysis and linguistic cues are proposed and studied. Experimental results show that the proposed algorithms can effectively discover controversial parts in news articles.
机译:我们提出并研究了一种共同挖掘新闻文本和社交媒体的新问题,以发现新闻中的争议点,从而实现了许多应用,例如为读者突出新闻文章中的争议点,揭示新闻中的争议及其随时间的趋势以及量化新闻来源的争议。我们设计了一个争议评分功能,以利用Twitter中的相关评论和新闻网站上的评论来评估新闻文章中提到的问题的争议,从而发现新闻文章中最具争议的句子。提出并研究了基于情感分析和语言线索的多元评分策略。实验结果表明,该算法可以有效地发现新闻报道中有争议的部分。

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