In this paper we investigate risk prediction of criminal re-offense among juvenile defendants using general-purpose machine learning (ML) algorithms. We show that in our dataset, containing hundreds of cases, ML models achieve better predictive power than a structured professional risk assessment tool, the Structured Assessment of Violence Risk in Youth (SAVRY), at the expense of not satisfying relevant group fairness metrics that SAVRY does satisfy. We explore in more detail two possible causes of this algorithmic bias that are related to biases in the data with respect to two protected groups, foreigners and women. In particular, we look at (1) the differences in the prevalence of re-offense between protected groups and (2) the influence ...
Many problems in the criminal justice system would be solved if we could accurately determine which ...
Actuarial risk assessments might be unduly perceived as a neutral way to counteract implicit bias an...
The use of policing algorithms to predict for arrest is rising in America. However, research indicat...
Recidivism, or the subsequent commission of a criminal offense after receiving punishment in the jus...
Using criminal population conviction histories of recent offenders, prediction mod els are developed...
The Level of Service/Case Management Inventory (LS/CMI) is one of the most frequently used tools to ...
We try to address some challenges in structured risk assessment tools in two application areas of re...
Using criminal population criminal conviction history information, prediction models are developed t...
Algorithms have recently become prevalent in the criminal justice system. Tools known as recidivism ...
Artificial intelligence and machine learning (AI/ML) models are increasingly utilised in every aspec...
Machine learning has been widely applied in facilitating high-staked decision making, however, there...
Algorithms for predicting recidivism are commonly used to assess a criminal defendant’s likelihood o...
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 ...
In this study, the authors compared logistic regression and predictive data mining techniques such a...
Many problems in the criminal justice system would be solved if we could accurately determine which ...
Actuarial risk assessments might be unduly perceived as a neutral way to counteract implicit bias an...
The use of policing algorithms to predict for arrest is rising in America. However, research indicat...
Recidivism, or the subsequent commission of a criminal offense after receiving punishment in the jus...
Using criminal population conviction histories of recent offenders, prediction mod els are developed...
The Level of Service/Case Management Inventory (LS/CMI) is one of the most frequently used tools to ...
We try to address some challenges in structured risk assessment tools in two application areas of re...
Using criminal population criminal conviction history information, prediction models are developed t...
Algorithms have recently become prevalent in the criminal justice system. Tools known as recidivism ...
Artificial intelligence and machine learning (AI/ML) models are increasingly utilised in every aspec...
Machine learning has been widely applied in facilitating high-staked decision making, however, there...
Algorithms for predicting recidivism are commonly used to assess a criminal defendant’s likelihood o...
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 ...
In this study, the authors compared logistic regression and predictive data mining techniques such a...
Many problems in the criminal justice system would be solved if we could accurately determine which ...
Actuarial risk assessments might be unduly perceived as a neutral way to counteract implicit bias an...
The use of policing algorithms to predict for arrest is rising in America. However, research indicat...