精神疾病会导致解雇吗?从因果机器学习的角度

Yuan Feng
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引用次数: 0

摘要

因果推理已广泛应用于卫生、经济、政策研究等领域。随着1974年Neyman-Rubin框架的引入,越来越多的学者开始意识到变量之间的相关性并不等同于因果关系,因此过于依赖统计相关方法进行建模会导致严重的理论缺陷。本文利用精神疾病患者的工作数据,分析社会对精神疾病患者是否平等对待,使用倾向得分匹配(PSM)方法对协变量进行降维,并估计精神疾病对就业率的因果影响。我们的研究表明,实施PSM后,协变量都可以很好地平衡,与一般人群相比,患有精神疾病的员工被解雇的可能性高出5.8%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Can Mental Illness Lead to Dismissal? From a Causal Machine Learning Perspective
Causal inference has been used extensively in health, economics, policy research, and other fields. With the introduction of the Neyman-Rubin framework in 1974, more scholars began to realize that correlation between variables is not equivalent to causation, and therefore, relying too heavily on statistical correlation methods to model can lead to serious theoretical flaws. In this paper, we use data on the work of people with mental illness to analyze whether society treats people with mental illness equally, use propensity score matching (PSM) method to reduce the dimensionality of covariates, and estimate the causal effect of having a mental illness on hiring rates. Our study shows that the covariates can all be well balanced after the implementation of PSM and that employees with mental illness have a 5.8% greater likelihood of leading to dismissal compared to employees in the general population.
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