Interpretable Classification Models for Recidivism Prediction

Volume: 180, Issue: 3, Pages: 689 - 722
Published: Sep 5, 2016
Abstract
We investigate a long-debated question, which is how to create predictive models of recidivism that are sufficiently accurate, transparent, and interpretable to use for decision-making. This question is complicated as these models are used to support different decisions, from sentencing, to determining release on probation, to allocating preventative social services. Each use case might have an objective other than classification accuracy, such...
Paper Details
Title
Interpretable Classification Models for Recidivism Prediction
Published Date
Sep 5, 2016
Volume
180
Issue
3
Pages
689 - 722
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