Can Machine Learning Improve Screening for Targeted Delinquency Prevention Programs?

Volume: 21, Issue: 2, Pages: 158 - 170
Published: Nov 6, 2019
Abstract
The cost-effectiveness of targeted delinquency prevention programs for children depends on the accuracy of the screening process. Screening accuracy is often poor, resulting in wasted resources and missed opportunities to avert negative outcomes. This study examined whether screening approaches based on logistic regression or machine learning algorithms could improve accuracy relative to traditional sum-score approaches when identifying boys in...
Paper Details
Title
Can Machine Learning Improve Screening for Targeted Delinquency Prevention Programs?
Published Date
Nov 6, 2019
Volume
21
Issue
2
Pages
158 - 170
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