沙特阿拉伯犯罪推文的文本挖掘方法:从分析到预测

Amal Algefes, Nouf Aldossari, Fatma Masmoudi, Elham Kariri
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引用次数: 2

摘要

社交网络已被证明是调查人们情境和个人行为的一个巨大中心。最近,像Twitter这样的微博网站向研究人员表明,它们的内容可以被聚合起来,用于有效地预测、预测和推断现实世界事件的结果。沙特阿拉伯与犯罪相关的推文分析研究的最终目标是更深入地了解人们经常谈论的犯罪武器类型。在本文中,我们的目标是处理提到不同武器的推文,分析它们以收集诸如提到不同武器的推文百分比的年度变化等事实,并认识到Covid-19大流行等事件对犯罪社会讨论的影响。在接下来的步骤中,我们开发了许多分类器来预测推文中提到的武器。为了执行我们的任务,在大多数情况下使用Python编程语言。
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A Text-mining approach for crime tweets in Saudi Arabia: From analysis to prediction
Social networks have proven to be a massive hub for investigating contextual and individual behavior of people. Most recently micro-blogging sites like Twitter are indicating to researchers that their content can be aggregated and used to effectively predict forecast, and infer outcomes of real-world events. The crime-related tweets analysis research in Saudi Arabia set off with an ultimate goal of gathering a deeper understanding of what kinds of criminal weapons are people frequently talking about. In this paper, we aim at dealing with tweets mentioning different weapons, analyzing them to gather facts such as annual variation of percentage tweets mentioning different weapons, recognizing the impact of events such as the Covid-19 pandemic on crime social discussions. In the following step, we develop a number of classifiers to predict which weapon is mentioned in a tweet. In order to perform our tasks, the Python programming language is used in the majority of the cases.
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