Risk assessment instruments are used across the criminal justice system to estimate the probability of some future behavior given covariates. The estimated probabilities are then used in making decisions at the individual level. In the past, there has been controversy about whether the probabilities derived from group-level calculations can meaningfully be applied to individuals. Using Bayesian hierarchical models applied to a large longitudinal dataset from the court system in the state of Kentucky, we analyze variation in individual-level probabilities of failing to appear for court and the extent to which it is captured by covariates. We find that individuals within the same risk group vary widely in their probability of the outcome. In practice, this means that allocating individuals to risk groups based on standard approaches to risk assessment, in large part, results in creating distinctions among individuals who are not meaningfully different in terms of their likelihood of the outcome. This is because uncertainty about the probability that any particular individual will fail to appear is large relative to the difference in average probabilities among any reasonable set of risk groups.
翻译:整个刑事司法系统都使用风险评估工具来估计某些未来行为的共变概率,然后将估计概率用于个人层面的决策,过去曾就群体一级计算得出的概率是否可有意义地适用于个人存在争议,使用巴耶斯等级模型用于肯塔基州法院系统大型纵向数据集,我们分析个人不出庭的可能性差异和共变情况捕捉的可能性。我们发现,同一风险群体中的个人在结果概率上有很大差异。在实践中,这意味着根据风险评估的标准方法将个人分配给风险群体,这在很大程度上造成在结果可能性方面没有明显差异的个人之间的区别。这是因为,任何特定个人不出庭的可能性的不确定性与任何合理风险群体的平均概率差异相比是很大的。