Publication | Open Access
The accuracy, fairness, and limits of predicting recidivism
971
Citations
11
References
2018
Year
Forensic PsychologyArtificial IntelligenceEngineeringMachine LearningLawCriminal LawData ScienceData MiningPattern RecognitionBiasStatisticsPrediction ModellingPublic PolicyPredictive AnalyticsKnowledge DiscoveryIntelligent ClassificationDisparate ImpactComputer ScienceAutomated Decision-makingPredictive LearningOffender ClassificationCriminal JusticeAlgorithmic FairnessCriminal Justice ExpertiseJusticeSimple Linear PredictorBig Data
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. We further show that a simple linear predictor provided with only two features is nearly equivalent to COMPAS with its 137 features.
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