Synthetic estimation for the complier average causal effect

We propose an improved estimator of the complier average causal effect (CACE). Researchers typically choose a presumably-unbiased estimator for the CACE in studies with noncompliance, when many other lower-variance estimators may be available. We propose a synthetic estimator that combines information across all available estimators, leveraging the efficiency in lower-variance estimators while maintaining low bias. Our approach minimizes an estimate of the mean squared error of all convex combinations of the candidate estimators. We derive the asymptotic distribution of the synthetic estimator and demonstrate its good performance in simulation, displaying a robustness to inclusion of even high-bias estimators.

[1]  Nicholas T. T. Longford,et al.  Missing Data and Small-Area Estimation: Modern Analytical Equipment for the Survey Statistician , 2006 .

[2]  Frédéric Lavancier,et al.  A general procedure to combine estimators , 2014, Comput. Stat. Data Anal..

[3]  J. Higgins,et al.  Cochrane Handbook for Systematic Reviews of Interventions , 2010, International Coaching Psychology Review.

[4]  Xihong Lin,et al.  A Comparison of Methods for Estimating the Causal Effect of a Treatment in Randomized Clinical Trials Subject to Noncompliance , 2009, Biometrics.

[5]  S. Normand,et al.  Intent-to-Treat vs. Non-Intent-to-Treat Analyses under Treatment Non-Adherence in Mental Health Randomized Trials. , 2008, Psychiatric annals.

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

[7]  N. Hjort,et al.  Frequentist Model Average Estimators , 2003 .

[8]  J. N. K. Rao,et al.  Bootstrap and other methods to measure errors in survey estimates , 1988 .

[9]  Guido W. Imbens Instrumental Variables: An Econometrician’s Perspective , 2014 .

[10]  Avi Feller,et al.  Principal Score Methods: Assumptions, Extensions, and Practical Considerations , 2017 .

[11]  B. Hansen Least Squares Model Averaging , 2007 .

[12]  Joshua D. Angrist,et al.  Identification of Causal Effects Using Instrumental Variables , 1993 .

[13]  G. Judge,et al.  Combining estimators to improve structural model estimation and inference under quadratic loss , 2005 .

[14]  Malay Ghosh,et al.  Small Area Estimation: An Appraisal , 1994 .

[15]  S. R. Searle Linear Models: Searle/Linear , 1997 .

[16]  Donald B. Rubin,et al.  Bayesian Inference for Causal Effects: The Role of Randomization , 1978 .

[17]  Elizabeth A Stuart,et al.  Assessing the sensitivity of methods for estimating principal causal effects , 2015, Statistical methods in medical research.

[18]  Jiannan Lu,et al.  Principal stratification analysis using principal scores , 2016, 1602.01196.

[19]  Kevin M. Murphy,et al.  Estimation and Inference in Two-Step Econometric Models , 1985 .

[20]  G. Judge,et al.  A Semiparametric Basis for Combining Estimation Problems Under Quadratic Loss , 2004 .

[21]  K. Burnham,et al.  Model selection: An integral part of inference , 1997 .

[22]  D J Torgerson,et al.  Pragmatic trials: lab meets bedside , 2019, The British journal of dermatology.

[23]  J. Angrist,et al.  Two-Stage Least Squares Estimation of Average Causal Effects in Models with Variable Treatment Intensity , 1995 .

[24]  S. Hollis,et al.  What is meant by intention to treat analysis? Survey of published randomised controlled trials , 1999, BMJ.

[25]  W. Greene,et al.  计量经济分析 = Econometric analysis , 2009 .

[26]  J. Heckman,et al.  Policy-Relevant Treatment Effects , 2001 .

[27]  Bing Han,et al.  A synthetic estimator for the efficacy of clinical trials with all‐or‐nothing compliance , 2017, Statistics in medicine.

[28]  Roseanne McNamee,et al.  Intention to treat, per protocol, as treated and instrumental variable estimators given non‐compliance and effect heterogeneity , 2009, Statistics in medicine.

[29]  G. Robinson That BLUP is a Good Thing: The Estimation of Random Effects , 1991 .

[30]  Michele Tarsilla Cochrane Handbook for Systematic Reviews of Interventions , 2010, Journal of MultiDisciplinary Evaluation.

[31]  J. Miles,et al.  Preventing Alcohol Use with a Voluntary After-School Program for Middle School Students: Results from a Cluster Randomized Controlled Trial of CHOICE , 2012, Prevention Science.