线性模型中识别信念的引出、纳入与约束框架

A Framework for Eliciting, Incorporating, and Disciplining Identification Beliefs in Linear Models

Journal of Business & Economic Statistics · 2020
被引 11
人大 AABS 4

中文导读

提出一个贝叶斯框架,帮助研究者在线性模型中引出并纳入关于工具变量有效性、处理内生性和测量误差的信念,确保信念之间相互一致,避免矛盾。

Abstract

To estimate causal effects from observational data, an applied researcher must impose beliefs. The instrumental variables exclusion restriction, for example, represents the belief that the instrument has no direct effect on the outcome of interest. Yet beliefs about instrument validity do not exist in isolation. Applied researchers often discuss the likely direction of selection and the potential for measurement error in their articles but lack formal tools for incorporating this information into their analyses. Failing to use all relevant information not only leaves money on the table; it runs the risk of leading to a contradiction in which one holds mutually incompatible beliefs about the problem at hand. To address these issues, we first characterize the joint restrictions relating instrument invalidity, treatment endogeneity, and non-differential measurement error in a workhorse linear model, showing how beliefs over these three dimensions are mutually constrained by each other and the data. Using this information, we propose a Bayesian framework to help researchers elicit their beliefs, incorporate them into estimation, and ensure their mutual coherence. We conclude by illustrating our framework in a number of examples drawn from the empirical microeconomics literature.

识别信念线性模型工具变量贝叶斯框架