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The accuracy, fairness, and limits of predicting recidivism

机译:预测累犯的准确性,公平性和局限性

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Algorithms for predicting recidivism are commonly used to assess a criminal defendant’s likelihood of committing a crime. These predictions are used in pretrial, parole, and sentencing decisions. Proponents of these systems argue that big data and advanced machine learning make these analyses more accurate and less biased than humans. We show, however, that the widely used commercial risk assessment software COMPAS is no more accurate or fair than predictions made by people with little or no criminal justice expertise. In addition, despite COMPAS’s collection of 137 features, the same accuracy can be achieved with a simple linear classifier with only two features.
机译:预测累犯的算法通常用于评估刑事被告犯罪的可能性。这些预测用于预审,假释和量刑判决。这些系统的支持者认为,与人类相比,大数据和先进的机器学习使这些分析更加准确且没有偏见。但是,我们证明,广泛使用的商业风险评估软件COMPAS并不比没有或完全没有刑事司法专业知识的人的预测准确或公平。此外,尽管COMPAS收集了137个功能,但仅使用两个功能的简单线性分类器就可以实现相同的精度。

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