Making sense of sensitivity: extending omitted variable bias
Summary
We extend the omitted variable bias framework with a suite of tools for sensitivity analysis in regression models that does not require assumptions on the functional form of the treatment assignment mechanism nor on the distribution of the unobserved confounders, naturally handles multiple confounders, possibly acting non‐linearly, exploits expert knowledge to bound sensitivity parameters and can be easily computed by using only standard regression results. In particular, we introduce two novel sensitivity measures suited for routine reporting. The robustness value describes the minimum strength of association that unobserved confounding would need to have, both with the treatment and with the outcome, to change the research conclusions. The partial R2 of the treatment with the outcome shows how strongly confounders explaining all the residual outcome variation would have to be associated with the treatment to eliminate the estimated effect. Next, we offer graphical tools for elaborating on problematic confounders, examining the sensitivity of point estimates and t‐values, as well as ‘extreme scenarios’. Finally, we describe problems with a common ‘benchmarking’ practice and introduce a novel procedure to bound the strength of confounders formally on the basis of a comparison with observed covariates. We apply these methods to a running example that estimates the effect of exposure to violence on attitudes toward peace.
Citing Literature
Number of times cited according to CrossRef: 12
- Mohammed F. Faramawi, Leanna Delhey, Saly Abouelenein, Robert Delongchamp, Metabolic Syndrome and P-Wave Duration in the American Population, Annals of Epidemiology, 10.1016/j.annepidem.2020.04.002, (2020).
- Cong Wang, Yifan Lu, Can economic structural change and transition explain cross-country differences in innovative activity?, Technological Forecasting and Social Change, 10.1016/j.techfore.2020.120194, 159, (120194), (2020).
- Soumyajit Mazumder, Yuhua Wang, How Social Cleavages Facilitate State Revenue Extraction: Evidence from Qing China, SSRN Electronic Journal, 10.2139/ssrn.3622309, (2020).
- Bo Zhang, Dylan S. Small, A calibrated sensitivity analysis for matched observational studies with application to the effect of second‐hand smoke exposure on blood lead levels in children, Journal of the Royal Statistical Society: Series C (Applied Statistics), 10.1111/rssc.12443, 69, 5, (1285-1305), (2020).
- Timothy R. Brick, Drew H. Bailey, Rock the MIC: The Matrix of Implied Causation, a Tool for Experimental Design and Model Checking, Advances in Methods and Practices in Psychological Science, 10.1177/2515245920922775, (251524592092277), (2020).
- Chris Hess, Residential Segregation by Race and Ethnicity and the Changing Geography of Neighborhood Poverty, Spatial Demography, 10.1007/s40980-020-00066-3, (2020).
- Soojin Park, Kevin M. Esterling, Sensitivity Analysis for Pretreatment Confounding With Multiple Mediators, Journal of Educational and Behavioral Statistics, 10.3102/1076998620934500, (107699862093450), (2020).
- Jack Thompson, White Media Attitudes in the Trump Era, American Politics Research, 10.1177/1532673X20943566, (1532673X2094356), (2020).
- Laurenz Ennser-Jedenastik, What drives partisan conflict and consensus on welfare state issues?, Journal of Public Policy, 10.1017/S0143814X20000240, (1-21), (2020).
- CHAD HAZLETT, MATTO MILDENBERGER, Wildfire Exposure Increases Pro-Environment Voting within Democratic but Not Republican Areas, American Political Science Review, 10.1017/S0003055420000441, (1-7), (2020).
- Meital Rosenberg, Daniel Erian Armanios, Michaël Aklin, Paulina Jaramillo, Evidence of gender inequality in energy use from a mixed-methods study in India, Nature Sustainability, 10.1038/s41893-019-0447-3, (2019).
- Chad Hazlett, Werner Maokola, David Ami Wulf, Inference without randomization or ignorability: A stability‐controlled quasi‐experiment on the prevention of tuberculosis, Statistics in Medicine, 10.1002/sim.8717, 0, 0, (undefined).




