Résumé
Predictive judicial analytics holds the promise of increasing efficiency and fairness of law. Judicial analytics can assess extra-legal factors that influence decisions. Behavioral anomalies in judicial decision-making offer an intuitive understanding of feature relevance, which can then be used for debiasing the law. A conceptual distinction between inter-judge disparities in predictions and interjudge disparities in prediction accuracy suggests another normatively relevant criterion with regards to fairness. Predictive analytics can also be used in the first step of causal inference, where the features employed in the first step are exogenous to the case. Machine learning thus offers an approach to assess bias in the law and evaluate theories about the potential consequences of legal change.
Mots-clés
Judicial Analytics; Causal Inference; Behavioral Judging;
Remplacé par
Daniel L. Chen, « Judicial Analytics and the Great Transformation of American Law », Artificial Intelligence and the Law, vol. 27, n° 1, mars 2019, p. 15–42.
Voir aussi
Publié dans
IAST Working Paper, n° 18-87, décembre 2018