In this work, we propose an approach for assessing sensitivity to unobserved confounding in studies with multiple outcomes. We demonstrate how prior knowledge unique to the multi-outcome setting can be leveraged to strengthen causal conclusions beyond what can be achieved from analyzing individual outcomes in isolation. We argue that it is often reasonable to make a shared confounding assumption, under which residual dependence amongst outcomes can be used to simplify and sharpen sensitivity analyses. We focus on a class of factor models for which we can bound the causal effects for all outcomes conditional on a single sensitivity parameter that represents the fraction of treatment variance explained by unobserved confounders. We characteri...
The identification of causal average treatment effects (ATE) in observational studies requires data ...
Establishing cause-effect relationships from observational data often relies on untestable assumptio...
Summary We extend the omitted variable bias framework with a suite of tools for sensi...
Many questions in social and biomedical sciences are causal in nature. For example, sociologists an...
Many questions in social and biomedical sciences are causal in nature. For example, sociologists an...
PURPOSE: Observational studies are prone to (unmeasured) confounding. Sensitivity analysis of unmeas...
PURPOSE: Observational studies are prone to (unmeasured) confounding. Sensitivity analysis of unmeas...
Unmeasured confounding may undermine the validity of causal inference with observational studies. Se...
The ability to compare similar groups is central to causal inference. If two groups are the same exc...
Causal inference from observational data is a vital problem, but it comes with strong assumptions. M...
BACKGROUND: The impact of unmeasured confounders on causal associations can be studied by means of s...
BACKGROUND: The impact of unmeasured confounders on causal associations can be studied by means of s...
BACKGROUND: The impact of unmeasured confounders on causal associations can be studied by means of s...
The identification of causal average treatment effects (ATE) in observational studies requires data ...
Random-effects meta-analyses of observational studies can produce biased estimates if the synthesize...
The identification of causal average treatment effects (ATE) in observational studies requires data ...
Establishing cause-effect relationships from observational data often relies on untestable assumptio...
Summary We extend the omitted variable bias framework with a suite of tools for sensi...
Many questions in social and biomedical sciences are causal in nature. For example, sociologists an...
Many questions in social and biomedical sciences are causal in nature. For example, sociologists an...
PURPOSE: Observational studies are prone to (unmeasured) confounding. Sensitivity analysis of unmeas...
PURPOSE: Observational studies are prone to (unmeasured) confounding. Sensitivity analysis of unmeas...
Unmeasured confounding may undermine the validity of causal inference with observational studies. Se...
The ability to compare similar groups is central to causal inference. If two groups are the same exc...
Causal inference from observational data is a vital problem, but it comes with strong assumptions. M...
BACKGROUND: The impact of unmeasured confounders on causal associations can be studied by means of s...
BACKGROUND: The impact of unmeasured confounders on causal associations can be studied by means of s...
BACKGROUND: The impact of unmeasured confounders on causal associations can be studied by means of s...
The identification of causal average treatment effects (ATE) in observational studies requires data ...
Random-effects meta-analyses of observational studies can produce biased estimates if the synthesize...
The identification of causal average treatment effects (ATE) in observational studies requires data ...
Establishing cause-effect relationships from observational data often relies on untestable assumptio...
Summary We extend the omitted variable bias framework with a suite of tools for sensi...