Sensitivity Analysis of Individual Treatment Effects: A Robust Conformal Inference Approach
暂无分享,去创建一个
[1] T. Shakespeare,et al. Observational Studies , 2003 .
[2] D. Rubin,et al. The central role of the propensity score in observational studies for causal effects , 1983 .
[3] Aaditya Ramdas,et al. Estimating means of bounded random variables by betting , 2020 .
[4] Jacob Dorn,et al. Sharp Sensitivity Analysis for Inverse Propensity Weighting via Quantile Balancing , 2021, Journal of the American Statistical Association.
[5] Tyler J. VanderWeele,et al. Sensitivity Analysis in Observational Research: Introducing the E-Value , 2017, Annals of Internal Medicine.
[6] Tyler J. VanderWeele,et al. Sensitivity Analysis Without Assumptions , 2015, Epidemiology.
[7] Jonathan A C Sterne,et al. The impact of residual and unmeasured confounding in epidemiologic studies: a simulation study. , 2007, American journal of epidemiology.
[8] D. Rubin,et al. Assessing Sensitivity to an Unobserved Binary Covariate in a Nonrandomized Experiment with Binary Outcome. , 1982 .
[9] Emmanuel J. Candès,et al. Conformal inference of counterfactuals and individual treatment effects , 2020, Journal of the Royal Statistical Society: Series B (Statistical Methodology).
[10] Avi Feller,et al. Assessing Treatment Effect Variation in Observational Studies: Results from a Data Challenge , 2019, Observational Studies.
[11] D. Rubin,et al. Causal Inference for Statistics, Social, and Biomedical Sciences: An Introduction , 2016 .
[12] G. W. Imbens. Sensitivity to Exogeneity Assumptions in Program Evaluation , 2003 .
[13] F. D’Ascenzo,et al. Unmeasured Confounders in Observational Studies Comparing Bilateral Versus Single Internal Thoracic Artery for Coronary Artery Bypass Grafting: A Meta‐Analysis , 2018, Journal of the American Heart Association.
[14] John C. Duchi,et al. Robust Validation: Confident Predictions Even When Distributions Shift , 2020, ArXiv.
[15] E. C. Hammond,et al. Smoking and lung cancer: recent evidence and a discussion of some questions. , 1959, Journal of the National Cancer Institute.
[16] Donald B. Rubin,et al. Comment : Neyman ( 1923 ) and Causal Inference in Experiments and Observational Studies , 2007 .
[17] A. Gammerman,et al. On-line predictive linear regression , 2005, math/0511522.
[18] Vladimir Vovk,et al. Transductive conformal predictors , 2015, AIAI.
[19] I NICOLETTI,et al. The Planning of Experiments , 1936, Rivista di clinica pediatrica.
[20] Vladimir Vovk,et al. A tutorial on conformal prediction , 2007, J. Mach. Learn. Res..
[21] P. Rosenbaum,et al. Dual and simultaneous sensitivity analysis for matched pairs , 1998 .
[22] Yaniv Romano,et al. Conformalized Quantile Regression , 2019, NeurIPS.
[23] Chirag Gupta,et al. Nested conformal prediction and quantile out-of-bag ensemble methods , 2019, Pattern Recognit..
[24] Yaniv Romano,et al. Classification with Valid and Adaptive Coverage , 2020, NeurIPS.
[25] Donald B. Rubin,et al. Bayesian Inference for Causal Effects: The Role of Randomization , 1978 .
[26] Edgar Dobriban,et al. PAC Prediction Sets Under Covariate Shift , 2021, ArXiv.
[27] Vladimir Vovk,et al. Conditional validity of inductive conformal predictors , 2012, Machine Learning.
[28] Yaniv Romano,et al. Testing for Outliers with Conformal p-values , 2021 .
[29] I. Bross. Spurious effects from an extraneous variable. , 1966, Journal of chronic diseases.
[30] Larry Wasserman,et al. Distribution‐free prediction bands for non‐parametric regression , 2014 .
[31] Jing Lei,et al. Fast Exact Conformalization of Lasso using Piecewise Linear Homotopy , 2017, 1708.00427.
[32] Zhiqiang Tan,et al. A Distributional Approach for Causal Inference Using Propensity Scores , 2006 .
[33] I. Bross,et al. Pertinency of an extraneous variable. , 1967, Journal of chronic diseases.
[34] Alexander Gammerman,et al. Hedging predictions in machine learning , 2006, ArXiv.
[35] Alessandro Rinaldo,et al. Distribution-Free Predictive Inference for Regression , 2016, Journal of the American Statistical Association.
[36] D. Rubin,et al. Assessing Sensitivity to an Unobserved Binary Covariate in an Observational Study with Binary Outcome , 1983 .
[37] Michael I. Jordan,et al. Distribution-Free, Risk-Controlling Prediction Sets , 2021, J. ACM.
[38] Nicolai Meinshausen,et al. Quantile Regression Forests , 2006, J. Mach. Learn. Res..
[39] Emma Brunskill,et al. Off-policy Policy Evaluation For Sequential Decisions Under Unobserved Confounding , 2020, NeurIPS.
[40] Emmanuel J. Candès,et al. Conformal Prediction Under Covariate Shift , 2019, NeurIPS.
[41] Paul R Rosenbaum,et al. Attributing Effects to Treatment in Matched Observational Studies , 2002 .
[42] John Duchi,et al. BOUNDS ON THE CONDITIONAL AND AVERAGE TREATMENT EFFECT WITH UNOBSERVED CONFOUNDING FACTORS. , 2018, Annals of statistics.
[43] John C. Duchi,et al. Knowing what You Know: valid and validated confidence sets in multiclass and multilabel prediction , 2020, J. Mach. Learn. Res..
[44] P. Rosenbaum. Sensitivity analysis for certain permutation inferences in matched observational studies , 1987 .
[45] W. Gasarch,et al. The Book Review Column 1 Coverage Untyped Systems Simple Types Recursive Types Higher-order Systems General Impression 3 Organization, and Contents of the Book , 2022 .
[46] Nathan Kallus,et al. Minimax-Optimal Policy Learning Under Unobserved Confounding , 2020, Manag. Sci..