Detecting the Magnitude of Events from News Articles

Ameeta Agrawal, Raghavender Sahdev, Heydar Davoudi, Forouq Khonsari, Aijun An, Susan McGrath
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引用次数: 11

Abstract

Forced migration is increasingly becoming a global issue of concern. In this paper, we present an effective model of targeted event detection, as an essential step towards the forced migration detection problem. To date, most of the the approaches deal with the event detection in a general setting with the main objective of detecting the presence or onset of an event. However, we focus on analyzing the magnitude of a given event from a collection of text documents such as news articles from multiple sources. We use violence as an illustration as it is one of the most critical factors of forced migration. The recent advancements in semantic similarity measures are adopted to obtain relevant violence scores for each word in the vocabulary of news articles in an unsupervised manner. The resulting scores are then used to compute the average daily violence scores over a period of three months. Evaluation of the proposed model against a manually annotated data set yields a Pearson's correlation of 0.8. We also include a case study exploring the relationship between violence and key events.
从新闻文章中检测事件的大小
被迫移徙日益成为一个令人关切的全球性问题。在本文中,我们提出了一个有效的目标事件检测模型,作为解决强制迁移检测问题的重要步骤。迄今为止,大多数方法都是在一般情况下处理事件检测,其主要目标是检测事件的存在或开始。然而,我们关注的是从文本文档(如来自多个来源的新闻文章)的集合中分析给定事件的大小。我们用暴力作为例证,因为它是强迫移民的最关键因素之一。本文采用语义相似度度量的最新进展,以无监督的方式获得新闻文章词汇中每个单词的相关暴力分数。结果得分然后被用来计算三个月期间的平均每日暴力得分。根据手动注释的数据集对提出的模型进行评估,Pearson的相关性为0.8。我们还包括一个案例研究,探讨暴力和关键事件之间的关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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