对时间事件进行分类:以国内恐怖主义为例

Wingyan Chung
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引用次数: 8

摘要

在许多紧急事件中,经常使用多种报告和信息来源,帮助情报和安全人员在短时间内了解情况。对这些信息进行适当的分类和分析可以提高处理这些大量可能相互冲突的信息的效率,从而有助于挽救生命。然而,对网络安全应用中时间事件分类的研究并不多见。在这项研究中,我们开发了一种自动化的方法来对文本文档中描述的时间事件进行分类。该方法包括自动索引、术语提取和自动分类。我们进行了一个国内恐怖主义的案例研究,我们分析了96篇关于导致6人死亡和1人重伤的枪击悲剧的在线新闻文章。对时间分类中使用的不同数量的提取文本特征(从20到100)的分析表明,使用不同算法的分类精度逐渐提高。Naïve贝叶斯和支持向量机分类提供了稳定的改进(从47%到68%),而神经网络在使用70个特征时具有最高的准确性。研究结果为研究人员和情报人员理解文本特征与突发事件演化的关系提供了新的视角。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Categorizing temporal events: A case study of domestic terrorism
In many emergency incidents, multiple reports and information sources are often used to help intelligence and security personnel to understand the situation during a short time period. Proper categorization and analysis of this information could enhance the efficiency of handling this large amount of potentially conflicting information, thus contributing to saving lives. The study of categorization of temporal events in cyber security application is, however, not widely found. In this research, we developed an automated approach to categorizing temporal events described in textual documents. The approach consists of automatic indexing, term extraction, and automatic categorization. We conducted a case study of domestic terrorism where we analyzed 96 online news articles about a shooting tragedy that resulted in 6 deaths and 1 seriously injured. Analyses of different numbers of extracted textual features (from 20 to 100) used in the temporal categorization revealed a gradual improvement of classification accuracies across different algorithms used. Naïve Bayes and SVM classification provided stable improvement (from 47% to 68%), whereas Neural Network had the highest accuracy when 70 features were used. The results provide new insights for researchers and intelligence personnel to understand the relationship between textual features and emergency event evolution.
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