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首页> 外文期刊>Journal of Quantitative Criminology >Estimating Treatment Effects and Predicting Recidivism for Community Supervision Using Survival Analysis with Instrumental Variables
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Estimating Treatment Effects and Predicting Recidivism for Community Supervision Using Survival Analysis with Instrumental Variables

机译:使用工具变量的生存分析估算社区监督的治疗效果并预测累犯

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摘要

Criminal justice researchers often seek to predict criminal recidivism and to estimate treatment effects for community corrections programs. Although random assignment provides a desirable avenue to estimating treatment effects, often estimation must be based on observational data from operating corrections programs. Using observational data raises the risk of selection bias. In the community corrections contexts, researchers can sometimes use judges as instrumental variables. However, the use of instrumental variable estimation is complicated for nonlinear models, and when studying criminal recidivism, researchers often choose to use survival models, which are nonlinear given right-hand-censoring or competing events. This paper discusses a procedure for estimating survival models with judges as instruments. It discusses strengths and weaknesses of this approach and demonstrates some of the estimation properties with a computer simulation. Although this paper’s focus is narrow, its implications are broad. A conclusion argues that instrumental variable estimation is valuable for a broad range of topics both within and outside of criminal justice.
机译:刑事司法研究人员经常寻求预测犯罪再犯,并估计社区矫正计划的治疗效果。尽管随机分配为估算治疗效果提供了理想的途径,但估算通常必须基于来自操作校正程序的观察数据。使用观测数据会增加选择偏见的风险。在社区矫正的情况下,研究人员有时可以使用法官作为工具变量。但是,对于非线性模型,工具变量估计的使用很复杂,在研究犯罪累犯时,研究人员经常选择使用生存模型,而生存模型在给出右手检查或竞争事件的情况下是非线性的。本文讨论了以法官为工具估算生存模型的程序。它讨论了这种方法的优点和缺点,并通过计算机仿真演示了一些估计属性。尽管本文关注的范围很窄,但其含义是广泛的。一个结论认为,工具变量估计对于刑事司法内外的广泛主题都是有价值的。

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