Placing (Historical) Facts on a Timeline: A Classification cum Coref Resolution Approach

Sayantan Adak, Altaf Ahmad, Aditya Basu, Animesh Mukherjee
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Abstract

A timeline provides one of the most effective ways to visualize the important historical facts that occurred over a period of time, presenting the insights that may not be so apparent from reading the equivalent information in textual form. By leveraging generative adversarial learning for important sentence classification and by assimilating knowledge based tags for improving the performance of event coreference resolution we introduce a two staged system for event timeline generation from multiple (historical) text documents. We demonstrate our results on two manually annotated historical text documents. Our results can be extremely helpful for historians, in advancing research in history and in understanding the socio-political landscape of a country as reflected in the writings of famous personas.
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在时间轴上放置(历史)事实:分类和核心解决方法
时间轴提供了一种最有效的方式,可以将一段时间内发生的重要历史事实形象化,呈现出阅读文本形式的同等信息时可能不那么明显的见解。通过利用生成式对抗学习进行重要的句子分类,并通过吸收基于知识的标签来提高事件共参考分辨率的性能,我们引入了一个两阶段的系统,用于从多个(历史)文本文档生成事件时间轴。我们在两个手工注释的历史文本文档上演示了我们的结果。我们的研究结果对历史学家非常有帮助,有助于推进历史研究,有助于理解一个国家的社会政治景观,这反映在著名人物的著作中。
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