Semiparametric Difference-in-Differences Estimators

The difference-in-differences (DID) estimator is one of the most popular tools for applied research in economics to evaluate the effects of public interventions and other treatments of interest on some relevant outcome variables. However, it is well known that the DID estimator is based on strong identifying assumptions. In particular, the conventional DID estimator requires that, in the absence of the treatment, the average outcomes for the treated and control groups would have followed parallel paths over time. This assumption may be implausible if pre-treatment characteristics that are thought to be associated with the dynamics of the outcome variable are unbalanced between the treated and the untreated. That would be the case, for example, if selection for treatment is influenced by individual-transitory shocks on past outcomes (Ashenfelter's dip). This article considers the case in which differences in observed characteristics create non-parallel outcome dynamics between treated and controls. It is shown that, in such a case, a simple two-step strategy can be used to estimate the average effect of the treatment for the treated. In addition, the estimation framework proposed in this article allows the use of covariates to describe how the average effect of the treatment varies with changes in observed characteristics. Copyright 2005, Wiley-Blackwell.

[1]  Jeffrey M. Wooldridge,et al.  Estimating average partial effects under conditional moment independence assumptions , 2004 .

[2]  Alberto Abadie Semiparametric instrumental variable estimation of treatment response models , 2003 .

[3]  Guido W. Imbens,et al.  EFFICIENT ESTIMATION OF AVERAGE TREATMENT EFFECTS , 2003 .

[4]  Amy N. Finkelstein The effect of tax subsidies to employer-provided supplementary health insurance: evidence from Canada , 2002 .

[5]  Jeffrey M. Woodbridge Econometric Analysis of Cross Section and Panel Data , 2002 .

[6]  O. Linton,et al.  Asymptotic Expansions for Some Semiparametric Program Evaluation Estimators , 2001 .

[7]  Costas Meghir,et al.  Evaluating the Employment Impact of a Mandatory Job Search Assistance Program , 2001 .

[8]  J. Robins,et al.  Marginal Structural Models to Estimate the Joint Causal Effect of Nonrandomized Treatments , 2001 .

[9]  J. Angrist,et al.  Consequences of Employment Protection? The Case of the Americans with Disabilities Act , 1998, Journal of Political Economy.

[10]  G. Imbens,et al.  Efficient Estimation of Average Treatment Effects Using the Estimated Propensity Score , 2000 .

[11]  Gerald T. Garvey,et al.  Capital Structure and Corporate Control: The Effect of Antitakeover Statutes on Firm Leverage , 1999 .

[12]  Miles Corak,et al.  Statistics Canada. DEATH AND DIVORCE: THE LONG-TERM CONSEQUENCES OF PARENTAL LOSS ON ADOLESCENTS , 1998 .

[13]  R. Blundell,et al.  Labor Supply: A Review of Alternative Approaches , 1998 .

[14]  James J. Heckman,et al.  Characterizing Selection Bias Using Experimental Data , 1998 .

[15]  J. Angrist,et al.  Empirical Strategies in Labor Economics , 1998 .

[16]  A. V. D. Vaart,et al.  Asymptotic Statistics: Frontmatter , 1998 .

[17]  Petra E. Todd,et al.  Matching As An Econometric Evaluation Estimator: Evidence from Evaluating a Job Training Programme , 1997 .

[18]  W. Newey,et al.  Convergence rates and asymptotic normality for series estimators , 1997 .

[19]  Jeffrey B. Liebman,et al.  Labor Supply Response to the Earned Income Tax Credit , 1995 .

[20]  Bruce D. Meyer,et al.  Workers' compensation and injury duration: evidence from a natural experiment. , 1995, The American economic review.

[21]  Bruce D. Meyer Natural and Quasi- Experiments in Economics , 1994 .

[22]  A. Case,et al.  Unnatural Experiments? Estimating the Incidence of Endogenous Policies , 1994 .

[23]  W. Newey,et al.  The asymptotic variance of semiparametric estimators , 1994 .

[24]  David Card,et al.  Minimum Wages and Employment: A Case Study of the Fast Food Industry in New Jersey and Pennsylvania , 1993 .

[25]  David Card,et al.  Do Minimum Wages Reduce Employment? A Case Study of California, 1987–89 , 1991 .

[26]  H. James VARIETIES OF SELECTION BIAS , 1990 .

[27]  David Card The Impact of the Mariel Boatlift on the Miami Labor Market , 1989 .

[28]  C. Roehrig,et al.  Conditions for Identification in Nonparametric and Parametic Models , 1988 .

[29]  W. Newey,et al.  Large sample estimation and hypothesis testing , 1986 .

[30]  Orley Ashenfelter,et al.  Using the Longitudinal Structure of Earnings to Estimate the Effect of Training Programs , 1984 .

[31]  D. Rubin,et al.  The central role of the propensity score in observational studies for causal effects , 1983 .

[32]  H. White Consequences and Detection of Misspecified Nonlinear Regression Models , 1981 .

[33]  O. Ashenfelter,et al.  Estimating the Effect of Training Programs on Earnings , 1976 .

[34]  D. Rubin Assignment to Treatment Group on the Basis of a Covariate , 1976 .

[35]  D. Rubin Estimating causal effects of treatments in randomized and nonrandomized studies. , 1974 .

[36]  W. Rudin Principles of mathematical analysis , 1964 .

[37]  D. Horvitz,et al.  A Generalization of Sampling Without Replacement from a Finite Universe , 1952 .