挖掘社交媒体内容用于犯罪预测

S. Aghababaei, M. Makrehchi
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引用次数: 39

摘要

社交媒体为用户提供了越来越多的机会,让他们在大量数据中自愿分享自己的想法和关注。虽然来自每个人的用户生成的数据可能不能提供相当多的信息,但当它们结合在一起时,它们包含隐藏变量,这些变量可能传达重要的事件。在本文中,我们探讨了社交媒体背景是否可以为犯罪预测提供社会行为“信号”的问题。他们的假设是,社交媒体(尤其是Twitter)上的大量公开数据可能包含预测变量,这些变量可以表明犯罪率的变化。我们开发了一个犯罪趋势预测模型,其目标是利用Twitter的内容来确定犯罪率在未来的时间框架内是下降还是增加。我们还提出了一个Twitter采样模型来收集历史数据,以避免随着时间的推移而丢失数据。对美国不同城市的预测模型进行了评估。实验揭示了从内容中提取的特征与犯罪率方向之间的相关性。总体而言,该研究深入了解了社会内容与犯罪趋势的相关性,以及社会数据在提供预测指标方面的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mining Social Media Content for Crime Prediction
Social media provides increasing opportunities for users to voluntarily share their thoughts and concerns in a large volume of data. While user-generated data from each individual may not provide considerable information, when combined, they include hidden variables, which may convey significant events. In this paper, we pursue the question of whether social media context can provide socio-behavior "signals" for crime prediction. The hypothesis is that crowd publicly available data in social media, in particular Twitter, may include predictive variables, which can indicate the changes in crime rates. We developed a model for crime trend prediction where the objective is to employ Twitter content to identify whether crime rates have dropped or increased for the prospective time frame. We also present a Twitter sampling model to collect historical data to avoid missing data over time. The prediction model was evaluated for different cities in the United States. The experiments revealed the correlation between features extracted from the content and crime rate directions. Overall, the study provides insight into the correlation of social content and crime trends as well as the impact of social data in providing predictive indicators.
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