Contribution à des ouvrages

Machine Learning and the Rule of Law

Daniel L. Chen

Résumé

Predictive judicial analytics holds the promise of increasing the fairness of law. Much empirical work observes inconsistencies in judicial behavior. By predicting judicial decisions—with more or less accuracy depending on judicial attributes or case characteristics—machine learning offers an approach to detecting when judges most likely to allow extralegal biases to influence their decision making. In particular, low predictive accuracy may identify cases of judicial “indifference,” where case characteristics (interacting with judicial attributes) do no strongly dispose a judge in favor of one or another outcome. In such cases, biases may hold greater sway, implicating the fairness of the legal system.

Remplace

Daniel L. Chen, « Machine Learning and Rule of Law », IAST Working Paper, n° 18-88, décembre 2018.

Voir aussi

Publié dans

Law as Data: Computation, Text, and the Future of Legal Analysis, 2019sous la direction de Michael Livermore et Daniel Rockmore, Santa Fe Institute Press, 2019