
@article{ref1,
title="Predicting criminal recidivism: A comparison of neural network models with statistical methods",
journal="Journal of criminal justice",
year="1996",
author="Caulkins, Jonathan and Cohen, John and Gorr, Wilpen and Wei, Jiuchang",
volume="24",
number="3",
pages="227-240",
abstract="This article applies neural network and conventional statistical models to predicting criminal recidivism. While having promising properties for predicting recidivism, the network models do not exhibit any advantage over the other methods in an application on a well-known data set. Analysis suggests that currently available prediction variables have limited information content for discriminating recidivists, regardless of the models or methods used.<p />",
language="",
issn="0047-2352",
doi="10.1016/0047-2352(96)00012-8",
url="http://dx.doi.org/10.1016/0047-2352(96)00012-8"
}