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
Artificial intelligence and machine learning (AI/ML) models are increasingly utilised in every aspec...
Predictive algorithms are playing an increasingly prominent role in society, being used to predict r...
Many problems in the criminal justice system would be solved if we could accurately determine which ...
Algorithms have recently become prevalent in the criminal justice system. Tools known as recidivism ...
Recidivism, or the subsequent commission of a criminal offense after receiving punishment in the jus...
Machine learning has been widely applied in facilitating high-staked decision making, however, there...
Dressel and Farid recently found that laypeople were as accurate as statistical algorithms in predic...
Recidivism prediction provides decision makers with an assessment of the likelihood that a criminal ...
Recent research has questioned the value of statistical learning methods for producing accurate pred...
Quantitative recidivism risk assessment can be used at the pretrial detention, trial, sentencing, an...
Using criminal population conviction histories of recent offenders, prediction mod els are developed...
Big data and algorithmic risk prediction tools promise to improve criminal justice systems by reduci...
Algorithmic risk assessment tools are informed by scientific research concerning which factors are p...
The present paper examines the recidivism risk assessment instrument FOTRES, addressing the question...
In this paper we investigate risk prediction of criminal re-offense among juvenile defendants using ...
Artificial intelligence and machine learning (AI/ML) models are increasingly utilised in every aspec...
Predictive algorithms are playing an increasingly prominent role in society, being used to predict r...
Many problems in the criminal justice system would be solved if we could accurately determine which ...
Algorithms have recently become prevalent in the criminal justice system. Tools known as recidivism ...
Recidivism, or the subsequent commission of a criminal offense after receiving punishment in the jus...
Machine learning has been widely applied in facilitating high-staked decision making, however, there...
Dressel and Farid recently found that laypeople were as accurate as statistical algorithms in predic...
Recidivism prediction provides decision makers with an assessment of the likelihood that a criminal ...
Recent research has questioned the value of statistical learning methods for producing accurate pred...
Quantitative recidivism risk assessment can be used at the pretrial detention, trial, sentencing, an...
Using criminal population conviction histories of recent offenders, prediction mod els are developed...
Big data and algorithmic risk prediction tools promise to improve criminal justice systems by reduci...
Algorithmic risk assessment tools are informed by scientific research concerning which factors are p...
The present paper examines the recidivism risk assessment instrument FOTRES, addressing the question...
In this paper we investigate risk prediction of criminal re-offense among juvenile defendants using ...
Artificial intelligence and machine learning (AI/ML) models are increasingly utilised in every aspec...
Predictive algorithms are playing an increasingly prominent role in society, being used to predict r...
Many problems in the criminal justice system would be solved if we could accurately determine which ...