Crime prevention strategies based on early intervention depend on accurate risk assessment instruments for identifying high risk youth. It is important in this context that the instruments be convenient to administer, which means, in particular, that they should also be reasonably brief; adaptive screening tests are useful for this purpose. Adaptive tests constructed using classification and regression trees are becoming a popular alternative to traditional Item Response Theory (IRT) approaches for adaptive testing. However, tree-based adaptive tests lack a principled criterion for terminating the test. This paper develops a Bayesian decision theory framework for measuring the trade-off between brevity and accuracy, when considering tree-based adaptive screening tests of different lengths. We also present a novel method for designing tree-based adaptive tests, motivated by this framework. The framework and associated adaptive test method are demonstrated through an application to youth delinquency risk assessment in Honduras; it is shown that an adaptive test requiring a subject to answer fewer than 10 questions can identify high risk youth nearly as accurately as an unabridged survey containing 173 items.
翻译:以早期干预为基础的预防犯罪战略取决于准确的风险评估工具来识别高风险青年,在这方面,重要的是,这些文书要便于管理,特别是意味着这些文书应合理简短;适应性筛选试验对此有用;使用分类和回归性树木建造的适应性试验正在成为传统的适应性项目反应理论(IRT)测试方法的流行替代物;然而,以树为基础的适应性试验缺乏终止试验的原则标准;本文件在考虑不同长度的基于树的适应性筛选试验时,为衡量简洁和准确性之间的取舍制定了巴耶斯决定理论框架;我们还介绍了设计基于树的适应性试验的新方法,由该框架驱动;框架和相关适应性试验方法通过洪都拉斯青年犯罪风险评估的应用得到证明;事实证明,要求回答不到10个问题的适应性试验可以与包含173个项目的未断调查一样准确地确定高风险青年。