Inference for instrumental variables: a randomization inference approach
暂无分享,去创建一个
[1] S. Thompson,et al. Bias in causal estimates from Mendelian randomization studies with weak instruments , 2011, Statistics in medicine.
[2] Michael G. Hudgens,et al. Randomization-Based Inference Within Principal Strata , 2011, Journal of the American Statistical Association.
[3] Rembert De Blander,et al. Mostly Harmless Econometrics: An Empiricist's Companion , 2011 .
[4] Dylan S. Small,et al. Building a Stronger Instrument in an Observational Study of Perinatal Care for Premature Infants , 2010 .
[5] Luke Keele,et al. How strong is strong enough? Strengthening instruments through matching and weak instrument tests , 2016 .
[6] Eric Zivot,et al. Inference on Structural Parameters In Instrumental Variables Regression With Weak Instruments , 1998 .
[7] J. Angrist,et al. Identification and Estimation of Local Average Treatment Effects , 1995 .
[8] S. Thompson,et al. Avoiding bias from weak instruments in Mendelian randomization studies. , 2011, International journal of epidemiology.
[9] S. Ebrahim,et al. Mendelian randomization: prospects, potentials, and limitations. , 2004, International journal of epidemiology.
[10] Jean-Marie Dufour,et al. Some Impossibility Theorems in Econometrics with Applications to Structural and Dynamic Models , 1997 .
[11] N. Sheehan,et al. Assessing the suitability of summary data for two-sample Mendelian randomization analyses using MR-Egger regression: the role of the I2 statistic , 2016, International journal of epidemiology.
[12] A. Wald. The Fitting of Straight Lines if Both Variables are Subject to Error , 1940 .
[13] Angus Deaton. Instruments, Randomization, and Learning about Development , 2010 .
[14] J. Stock,et al. Instrumental Variables Regression with Weak Instruments , 1994 .
[15] P. Rosenbaum. Identification of Causal Effects Using Instrumental Variables: Comment , 2007 .
[16] T. VanderWeele,et al. Power and instrument strength requirements for Mendelian randomization studies using multiple genetic variants. , 2011, International journal of epidemiology.
[17] Frank Kleibergen,et al. Pivotal statistics for testing structural parameters in instrumental variables regression , 2002 .
[18] Dylan S. Small,et al. A review of instrumental variable estimators for Mendelian randomization , 2015, Statistical methods in medical research.
[19] Joshua D. Angrist,et al. Identification of Causal Effects Using Instrumental Variables , 1993 .
[20] Jonathan H. Wright,et al. A Survey of Weak Instruments and Weak Identification in Generalized Method of Moments , 2002 .
[21] Marcelo J. Moreira. A Conditional Likelihood Ratio Test for Structural Models , 2003 .
[22] Paul R. Rosenbaum,et al. Effects attributable to treatment: Inference in experiments and observational studies with a discrete pivot , 2001 .
[23] Hyunseung Kang,et al. Commentary: Matched Instrumental Variables: A Possible Solution to Severe Confounding in Matched Observational Studies? , 2016, Epidemiology.
[24] Brad T. Gomez,et al. Estimating the Electoral Effects of Voter Turnout , 2010, American Political Science Review.
[25] D. V. Lindley,et al. Randomization Analysis of Experimental Data: The Fisher Randomization Test Comment , 1980 .
[26] J. Robins,et al. Instruments for Causal Inference: An Epidemiologist's Dream? , 2006, Epidemiology.
[27] Howard S. Bloom,et al. Accounting for No-Shows in Experimental Evaluation Designs , 1984 .
[28] Dylan S. Small,et al. Randomization‐based instrumental variables methods for binary outcomes with an application to the ‘IMPROVE’ trial , 2017 .
[29] Richard Startz,et al. Some Further Results on the Exact Small Sample Properties of the Instrumental Variable Estimator , 1988 .
[30] G. Imbens,et al. Better Late than Nothing: Some Comments on Deaton (2009) and Heckman and Urzua (2009) , 2009 .
[31] George Davey Smith,et al. Mendelian randomization: Using genes as instruments for making causal inferences in epidemiology , 2008, Statistics in medicine.
[32] Jake Bowers,et al. Attributing Effects to a Cluster-Randomized Get-Out-the-Vote Campaign , 2009 .
[33] David W. Nickerson,et al. Getting Out the Vote in Local Elections: Results from Six Door-to-Door Canvassing Experiments , 2003 .
[34] S. Ebrahim,et al. 'Mendelian randomization': can genetic epidemiology contribute to understanding environmental determinants of disease? , 2003, International journal of epidemiology.
[35] T. W. Anderson,et al. Estimation of the Parameters of a Single Equation in a Complete System of Stochastic Equations , 1949 .
[36] Miguel A Hernán,et al. Think globally, act globally: An epidemiologist's perspective on instrumental variable estimation. , 2014, Statistical science : a review journal of the Institute of Mathematical Statistics.
[37] E. C. Fieller. SOME PROBLEMS IN INTERVAL ESTIMATION , 1954 .
[38] Paul R. Rosenbaum,et al. Exact Confidence Intervals for Nonconstant Effects by Inverting the Signed Rank Test , 2003 .
[39] Fan Yang,et al. Dissonant Conclusions When Testing the Validity of an Instrumental Variable , 2014 .
[40] Paul R. Rosenbaum,et al. Using quantile averages in matched observational studies , 1999 .
[41] J. Angrist,et al. Journal of Economic Perspectives—Volume 15, Number 4—Fall 2001—Pages 69–85 Instrumental Variables and the Search for Identification: From Supply and Demand to Natural Experiments , 2022 .
[42] David A. Jaeger,et al. Problems with Instrumental Variables Estimation when the Correlation between the Instruments and the Endogenous Explanatory Variable is Weak , 1995 .
[43] Paul R. Rosenbaum,et al. Robust, accurate confidence intervals with a weak instrument: quarter of birth and education , 2005 .
[44] Dylan S Small,et al. Using an instrumental variable to test for unmeasured confounding , 2014, Statistics in medicine.
[45] D. Rubin,et al. Causal Inference for Statistics, Social, and Biomedical Sciences: An Introduction , 2016 .
[46] M. Baiocchi,et al. Instrumental variable methods for causal inference , 2014, Statistics in medicine.
[47] J. Angrist,et al. Two-Stage Least Squares Estimation of Average Causal Effects in Models with Variable Treatment Intensity , 1995 .
[48] Eric Zivot,et al. Valid Confidence Intervals and Inference in the Presence of Weak Instruments , 1998 .
[49] Dylan S. Small,et al. Near/far matching: a study design approach to instrumental variables , 2012, Health Services and Outcomes Research Methodology.
[50] Dylan S. Small,et al. Full Matching Approach to Instrumental Variables Estimation with Application to the Effect of Malaria on Stunting , 2014, 1411.7342.
[51] Michael Wooldridge,et al. Econometric Analysis of Cross Section and Panel Data, 2nd Edition , 2001 .
[52] Peng Ding,et al. Randomization inference for treatment effect variation , 2014, 1412.5000.
[53] G. Imbens. Instrumental Variables: An Econometrician's Perspective , 2014, SSRN Electronic Journal.
[54] Peter M. Aronow,et al. Field Experiments and the Study of Voter Turnout , 2013 .
[55] James J Heckman,et al. Understanding Instrumental Variables in Models with Essential Heterogeneity , 2006, The Review of Economics and Statistics.
[56] J. Horowitz. Chapter 52 The Bootstrap , 2001 .
[57] Stephen Burgess,et al. Improving bias and coverage in instrumental variable analysis with weak instruments for continuous and binary outcomes , 2012, Statistics in medicine.
[58] James J. Heckman,et al. Identification of Causal Effects Using Instrumental Variables: Comment , 1996 .
[59] James G. Mulligan,et al. The Review of Economics and Statistics , 1998 .
[60] Eric Zivot,et al. Bayesian and Classical Approaches to Instrumental Variables Regression , 2003 .