关于联想混杂偏差

Priyantha Wijayatunga
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引用次数: 2

摘要

在根据观察数据估计治疗对结果的因果效应时,对一些对治疗和结果变量都有因果影响的混杂因素进行调节,足以消除所有这些混杂因素引入的偏倚。这是通过将它们包括在因果推理的潜在结果框架中的倾向得分模型中来完成的,而在因果图建模框架中,通常对它们进行条件反射。然而,在前一个框架中,当建模者发现一个与处理和结果都没有因果关系的变量时,就会令人困惑。一些人认为,这些变量也应该包括在分析中,以消除偏见。但另一些人则认为,它们没有引入偏倚,因此应该排除它们,而对它们的调节会在治疗和结果之间引入虚假的依赖关系,从而导致估计中出现额外的偏倚。我们表明,在不同的上下文中,两个参数都可能存在错误。当找到这样一个变量时,两个行为都不能给出正确的因果效应估计。为了减少错误,选择一个动作而不是另一个动作是必要的。我们讨论如何选择更好的行动。
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On Associative Confounder Bias
Conditioning on some set of confounders that causally affect both treatment and outcome variables can be sufficient for eliminating bias introduced by all such confounders when estimating causal effect of the treatment on the outcome from observational data. It is done by including them in propensity score model in so-called potential outcome framework for causal inference whereas in causal graphical modeling framework usual conditioning on them is done. However in the former framework, it is confusing when modeler finds a variable that is non-causally associated with both the treatment and the outcome. Some argue that such variables should also be included in the analysis for removing bias. But others argue that they introduce no bias so they should be excluded and conditioning on them introduces spurious dependence between the treatment and the outcome, thus resulting extra bias in the estimation. We show that there may be errors in both the arguments in different contexts. When such a variable is found neither of the actions may give the correct causal effect estimate. Selecting one action over the other is needed in order to be less wrong. We discuss how to select the better action.
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