Addressing Under-Reporting to Enhance Fairness and Accuracy in Mobility-based Crime Prediction

Jiahui Wu, E. Frías-Martínez, V. Frías-Martínez
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引用次数: 6

Abstract

Traditionally, historical crimes and socioeconomic data have been used to understand crime in cities and to build crime prediction models. Nevertheless, the increasing availability of mobility data from cell phones to location-based services, has introduced a new family of mobility-based crime prediction models that exploit the relation between mobility patterns and reported crime incidents. One of the major concerns of using reported crime data is underreporting, which will bias the crime predictions. In this paper, we propose a novel Bayesian Hierarchical model that utilizes domain knowledge about biases in reported crime data to characterize and enhance fairness and accuracy in mobility-based crime predictions. An in-depth feature analysis reveals the influence that various factors might play in crime under-reporting and algorithmic fairness for mobility-based crime predictors.
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解决低报问题,提高基于流动性的犯罪预测的公平性和准确性
传统上,历史犯罪和社会经济数据被用来了解城市犯罪并建立犯罪预测模型。然而,从移动电话到基于位置的服务的移动数据的日益可用性,引入了一系列新的基于移动的犯罪预测模型,这些模型利用了移动模式和报告的犯罪事件之间的关系。使用报告的犯罪数据的一个主要问题是少报,这将使犯罪预测产生偏差。在本文中,我们提出了一种新的贝叶斯层次模型,该模型利用报告犯罪数据中关于偏见的领域知识来表征和提高基于流动性的犯罪预测的公平性和准确性。一项深入的特征分析揭示了各种因素可能对犯罪漏报和基于流动性的犯罪预测算法公平性产生的影响。
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