Weighting methods are popular tools for estimating causal effects; assessing their robustness under unobserved confounding is important in practice. In the following paper, we introduce a new set of sensitivity models called "variance-based sensitivity models". Variance-based sensitivity models characterize the bias from omitting a confounder by bounding the distributional differences that arise in the weights from omitting a confounder, with several notable innovations over existing approaches. First, the variance-based sensitivity models can be parameterized with respect to a simple $R^2$ parameter that is both standardized and bounded. We introduce a formal benchmarking procedure that allows researchers to use observed covariates to reas...
This article evaluates the reliability of sensitivity tests (Leamer 1978). Using Monte Carlo methods...
BACKGROUND: The impact of unmeasured confounders on causal associations can be studied by means of s...
Systematic error due to possible unmeasured confounding may weaken the validity of findings from ob...
Summary We extend the omitted variable bias framework with a suite of tools for sensi...
Assessing sensitivity to unmeasured confounding is an important step in observational studies, which...
Unmeasured confounding may undermine the validity of causal inference with observational studies. Se...
Random-effects meta-analyses of observational studies can produce biased estimates if the synthesize...
Suppose one wishes to estimate a causal parameter given a sample of observations. This requires maki...
In this paper we present a sensitivity analysis for drawing inferences about parameters that are not...
Propensity score methods are a popular tool to control for confounding in observational data, but th...
When drawing causal inference from observational data, there is always concern about unmeasured conf...
Variance-based sensitivity indices have established themselves as a reference amongst practitioners ...
We consider the problem of constructing bounds on the average treatment effect (ATE) when unmeasured...
The assumption of no unmeasured confounders is a critical but unverifiable assumption required for c...
Variance-based sensitivity indices have established themselves as a reference among practitioners of...
This article evaluates the reliability of sensitivity tests (Leamer 1978). Using Monte Carlo methods...
BACKGROUND: The impact of unmeasured confounders on causal associations can be studied by means of s...
Systematic error due to possible unmeasured confounding may weaken the validity of findings from ob...
Summary We extend the omitted variable bias framework with a suite of tools for sensi...
Assessing sensitivity to unmeasured confounding is an important step in observational studies, which...
Unmeasured confounding may undermine the validity of causal inference with observational studies. Se...
Random-effects meta-analyses of observational studies can produce biased estimates if the synthesize...
Suppose one wishes to estimate a causal parameter given a sample of observations. This requires maki...
In this paper we present a sensitivity analysis for drawing inferences about parameters that are not...
Propensity score methods are a popular tool to control for confounding in observational data, but th...
When drawing causal inference from observational data, there is always concern about unmeasured conf...
Variance-based sensitivity indices have established themselves as a reference amongst practitioners ...
We consider the problem of constructing bounds on the average treatment effect (ATE) when unmeasured...
The assumption of no unmeasured confounders is a critical but unverifiable assumption required for c...
Variance-based sensitivity indices have established themselves as a reference among practitioners of...
This article evaluates the reliability of sensitivity tests (Leamer 1978). Using Monte Carlo methods...
BACKGROUND: The impact of unmeasured confounders on causal associations can be studied by means of s...
Systematic error due to possible unmeasured confounding may weaken the validity of findings from ob...