Evaluating Fairness in Predictive Policing Using Domain Knowledge

Ava Downey, Sheikh Rabiul Islam, Md Kamruzzaman Sarker
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Abstract

As an increasing number of Artificial Intelligence (AI) systems are ingrained in our day-to-day lives, it is crucial that they are fair and trustworthy. Unfortunately, this is often not the case for predictive policing systems, where there is evidence of bias towards age as well as race and sex leading to many people being mistakenly labeled as likely to be involved in a crime. In a system that already is under criticism for its unjust treatment of minority groups, it is crucial to find ways to mitigate this negative trend. In this work, we explored and evaluated the infusion of domain knowledge in the predictive policing system to minimize the prevailing fairness issues. The experimental results demonstrate an increase in fairness across all of the metrics for all of the protected classes bringing more trust into the predictive policing system by reducing the unfair policing of people.
基于领域知识的预测警务公平性评价
随着越来越多的人工智能(AI)系统在我们的日常生活中根深蒂固,它们的公平和值得信赖至关重要。不幸的是,在预测性警务系统中,情况往往并非如此。有证据表明,预测性警务系统对年龄、种族和性别存在偏见,导致许多人被错误地贴上可能参与犯罪的标签。在一个已经因不公正对待少数群体而受到批评的制度中,找到缓解这种负面趋势的方法至关重要。在这项工作中,我们探索和评估了预测警务系统中领域知识的注入,以最大限度地减少普遍存在的公平问题。实验结果表明,所有受保护阶层的所有指标的公平性都有所提高,通过减少对人们的不公平监管,为预测性警务系统带来了更多的信任。
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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