在原子级别探索事件演化模式

Lei Deng, Zhaoyun Ding, Bingying Xu, Bin Zhou, Yan Jia, Peng Zou
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引用次数: 2

摘要

新闻语料库的事件进化挖掘对于那些对与主题相关的文档集不感兴趣而对底层故事不感兴趣的人来说是有益的。从TDT领域衍生出来的最先进的方法大多是在文档级别考虑事件,这使得演化图中的每个事件都有不同的粒度。在本文中,我们通过将IE技术引入该任务,从统一的角度考虑事件。我们提出了一种无监督的方法,通过从文档中提取原子事件,识别它们的共同引用,并自动测量它们的关系来探索事件演化模式。然后构造事件演化图。同时,我们提出了两种策略,从新闻语料库中的大量原子事件中寻找具有新闻价值的子集,以简化事件演化图。最后,通过实验证明,该方法在中文新闻语料库上可以构建原子事件演化图,其顶点代表主题的重要事件,边缘表示相邻事件之间的合理关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring Event Evolution Patterns at the Atomic Level
The event evolution mining for news corpus is beneficial for people who are less interested in the set of documents related by a topic rather than the underlying stories. Most of state-of-the-art approaches which derived from the TDT field considered events at the document level, which made different granularity for each event in evolution graph. In this paper, we consider events from a unified perspective by introducing the IE techniques into this task. We propose an unsupervised approach to explore event evolution patterns through extracting atomic event from documents, identifying their co-reference, and measuring their relationship automatically. And then we construct the event evolution graph. Meanwhile, we propose two policies to find a newsworthy subset from a mass of atomic events in a news corpus to simplify the event evolution graph. Finally, we show experimentally that our method which works on a Chinese news corpus can construct the atomic event evolution graph, whose vertexes are standing for important events of the topic, and edges are reasonable relationship between their adjacent events.
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