自然语言文本中的事件时间关系

Vanitha Guda, Suresh Kumar Sanampudi
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引用次数: 1

摘要

由于大量的信息需求,从给定的自然语言文本中检索事件是不可避免的。从自然语言处理(NLP)的角度来看,“事件”是情况、事件、现实世界的实体或事实。提取事件并将其安排在时间轴上对于各种NLP应用程序都很有帮助,例如构建新闻文章摘要、处理健康记录和问答系统(QA)系统。本文提出了一个框架,用于从给定文档中识别事件和时间,并使用图数据结构表示它们。结果,将导出一个图来显示给定文本中的事件时间关系。事件构成图中的节点,边表示节点之间的时间关系。事件发生的时间有两种形式,即定性的(如之前、之后、期间等)和定量的(确切的时间点/时间段)。为了构建事件-时间-事件结构,将定量时间归一化为定性形式。由此获得的时间信息用于标记事件之间的边缘。识别2018年(信息检索提取论坛)FIRE会议共享任务evtext中发布的数据集,以评估该框架。精确度和召回率被用作评估指标,以访问所提出的框架与其他方法的性能,其中准确率为85%,精确度为90%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Event Time Relationship in Natural Language Text
Due to the numerous information needs, retrieval of events from a given natural language text is inevitable. In natural language processing (NLP) perspective, "Events" are situations, occurrences, real-world entities or facts. Extraction of events and arranging them on a timeline is helpful in various NLP application like building the summary of news articles, processing health records, and Question Answering System (QA) systems. This paper presents a framework for identifying the events and times from a given document and representing them using a graph data structure.  As a result, a graph is derived to show event-time relationships in the given text. Events form the nodes in a graph, and edges represent the temporal relations among the nodes. Time of an event occurrence exists in two forms namely qualitative (like before, after, duringetc) and quantitative (exact time points/periods). To build the event-time-event structure quantitative time is normalized to qualitative form. Thus obtained temporal information is used to label the edges among the events. Data set released in the shared task EvTExtract of (Forum for Information Retrieval Extraction) FIRE 2018 conference is identified to evaluate the framework. Precision and recall are used as evaluation metrics to access the performance of the proposed framework with other methods mentioned in state of the art with 85% of accuracy and 90% of precision.
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