It is not always clear how to adjust for control data in causal inference, balancing the goals of reducing bias and variance. We show how, in a setting with repeated experiments, Bayesian hierarchical modeling yields an adaptive procedure that uses the data to determine how much adjustment to perform. The result is a novel analysis with increased statistical efficiency compared to the default analysis based on difference estimates. We demonstrate this procedure on two real examples, as well as on a series of simulated datasets. We show that the increased efficiency can have real-world consequences in terms of the conclusions that can be drawn from the experiments. We also discuss the relevance of this work to causal inference and statistical design and analysis more generally.
翻译:并不总是很清楚如何调整因果推断控制数据,平衡减少偏差和差异的目标。我们通过反复实验来显示,在反复实验的环境中,贝叶斯等级模型如何产生一个适应性程序,利用数据来确定要进行多少调整。结果是一项新颖的分析,与基于差异估计的缺省分析相比,统计效率有所提高。我们用两个真实的例子以及一系列模拟数据集来证明这一程序。我们表明,提高效率在从实验中得出的结论方面可能会对现实世界产生影响。我们还讨论了这项工作与因果关系推断以及更广义的统计设计和分析的相关性。