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Discovering Event Evolution Graphs Based on News Articles Relationships

机译:基于新闻文章关系发现事件演化图

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There are many news articles reported online everyday. Within an ongoing topic, people can find a huge amount of news articles. A topic often consists of several events, and people are interested in the whole evolution of a topic along a timeline. This requests for finding and identifying the dependent relationships between events. In order to understand the whole evolution of a topic effectively, we propose a framework of event relationship analysis. We define three kinds of event relationships which are coccurrence dependence relationship, event reference relationship, and temporal proximity relationship for modeling how an event is dependent on another event within a topic. Through combining three kinds of relationships, we can discover an Event Evolution Graph (EEG) for users to view the evolution of a topic. Experiments conducted on a real data set show that our method outperforms baseline methods.
机译:每天在线都有许多新闻报道。在一个持续不断的话题中,人们可以找到大量的新闻文章。主题通常由多个事件组成,人们对主题沿时间轴的整个演变感兴趣。这要求查找和识别事件之间的依赖关系。为了有效地理解主题的整个演变过程,我们提出了一个事件关系分析框架。我们定义了三种事件关系,它们是并发依赖关系,事件参考关系和时间邻近关系,用于对一个事件如何依赖主题中的另一个事件进行建模。通过组合三种关系,我们可以发现事件演化图(EEG)供用户查看主题的演化。在真实数据集上进行的实验表明,我们的方法优于基线方法。

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