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      Interpretable Classification Models for Recidivism Prediction

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          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 as a desired true positive rate (TPR) or false positive rate (FPR). Each (TPR, FPR) pair is a point on the receiver operator characteristic (ROC) curve. We use popular machine learning methods to create models along the full ROC curve on a wide range of recidivism prediction problems. We show that many methods (SVM, Ridge Regression) produce equally accurate models along the full ROC curve. However, methods that designed for interpretability (CART, C5.0) cannot be tuned to produce models that are accurate and/or interpretable. To handle this shortcoming, we use a new method known as SLIM (Supersparse Linear Integer Models) to produce accurate, transparent, and interpretable models along the full ROC curve. These models can be used for decision-making for many different use cases, since they are just as accurate as the most powerful black-box machine learning models, but completely transparent, and highly interpretable.

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          Author and article information

          Journal
          2015-03-26
          2015-11-12
          Article
          1503.07810
          547a6c0a-8be2-49df-a591-1337b0fd67b9

          http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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          Custom metadata
          39 pages, 16 figures
          stat.ML stat.AP

          Applications,Machine learning
          Applications, Machine learning

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