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The Econometric Society Annual Reports [6pt] Econometrica Referees 2016-2017
The Econometric Society Annual Reports [6pt] Report of the Treasurer
2017 Election of Fellows to the Econometric Society
The Econometric Society Annual Reports [6pt] Report of the Editors 2016-2017
Submission of Manuscripts to the Econometric Society Monograph Series
The Econometric Society 2017 Annual Report of the President
The Econometric Society Annual Reports [6pt] Report of the Editors of the Monograph Series
The Econometric Society Annual Reports [6pt] Report of the Secretary
Using Instrumental Variables for Inference About Policy Relevant Treatment Parameters
We propose a method for using instrumental variables (IV) to draw inference about causal effects for individuals other than those affected by the instrument at hand. Policy relevance and external validity turn on the ability to do this reliably. Our method exploits the insight that both the IV estimand and many treatment parameters can be expressed as weighted averages of the same underlying marginal treatment effects. Since the weights are identified, knowledge of the IV estimand generally places some restrictions on the unknown marginal treatment effects, and hence on the values of the treatment parameters of interest. We show how to extract information about the treatment parameter of interest from the IV estimand and, more generally, from a class of IV‐like estimands that includes the two stage least squares and ordinary least squares estimands, among others. Our method has several applications. First, it can be used to construct nonparametric bounds on the average causal effect of a hypothetical policy change. Second, our method allows the researcher to flexibly incorporate shape restrictions and parametric assumptions, thereby enabling extrapolation of the average effects for compliers to the average effects for different or larger populations. Third, our method can be used to test model specification and hypotheses about behavior, such as no selection bias and/or no selection on gain.