In regression models with missing outcomes, selection bias can arise when the missingness mechanism depends on the outcome itself. This proposal focuses on an extension of the Heckman model to a setting where the outcome is binary and both the selection process and the outcome are modeled through logistic regression. A correction term analogous to the inverse Mills' ratio is derived based on relative risks. Under given assumptions, such a strategy provides an effective tool for bias correction in the presence of informative missingness.
翻译:在结果变量存在缺失的回归模型中,当缺失机制依赖于结果本身时,可能产生选择偏差。本研究提出将Heckman模型扩展至结果变量为二元的情境,其中选择过程和结果均通过逻辑回归建模。基于相对风险,推导出类似逆米尔斯比的校正项。在给定假设下,该策略为信息性缺失情况下的偏差校正提供了有效工具。