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GPLSIUA: Combining Temporal Information and Topic Modeling for Cross-Document Event Ordering

机译:GPLSIUA:结合时间信息和主题建模进行跨文档事件排序

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摘要

Building unified timelines from a collection of written news articles requires cross-document event coreference resolution and temporal relation extraction. In this paper we present an approach event coreference resolution according to: a) similar temporal information, and b) similar semantic arguments. Temporal information is detected using an automatic temporal information system (TIPSem), while semantic information is represented by means of LDA Topic Modeling. The evaluation of our approach shows that it obtains the highest Micro-average F-score results in the SemEval-2015 Task 4: "TimeLine: Cross-Document Event Ordering" (25.36% for TrackB, 23.15% for SubtrackB), with an improvement of up to 6% in comparison to the other systems. However, our experiment also showed some drawbacks in the Topic Modeling approach that degrades performance of the system.
机译:从一系列书面新闻中构建统一的时间表需要跨文档事件共指解决和时间关系提取。在本文中,我们根据以下方法提出了一种方法事件共指解决方案:a)相似的时间信息,b)相似的语义参数。使用自动时间信息系统(TIPSem)检测时间信息,而语义信息则通过LDA主题建模表示。对我们的方法的评估表明,它在SemEval-2015任务4:“时间轴:跨文档事件排序”中获得了最高的微平均F分数结果(TrackB为25.36%,SubtrackB为23.15%),并且有所改进与其他系统相比,最高可达6%。但是,我们的实验还显示了主题建模方法中的一些缺点,这些缺点会降低系统的性能。

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