The estimation of causal effects has a revered place in all fields of empirical political science, but a large volume of methodological and applied work ignores a fundamental fact: most people are skeptical of estimated causal effects. In particular, researchers are often worried about the assumption of no omitted variables or no unmeasured confounders. This paper combines two approaches to sensitivity analysis to provide researchers with a tool to investigate how specific violations of no omitted variables alter their estimates. This approach can help researchers determine which narratives imply weaker results and which actually strengthen their claims. This gives researchers and critics a reasoned and quantitative approach to assessing th...
Political scientists increasingly use causal graphs, specifically directed acyclic graphs (DAGs), to...
This thesis considers observational studies in which experimental units are not randomly assigned to...
Scholars often assume that the danger posed by omitted variable bias can be ameliorated by the inclu...
The estimation of causal effects has a revered place in all fields of empirical political science, b...
The estimation of causal effects has a revered place in all fields of empirical political science, b...
Many areas of political science focus on causal questions. Evidence from statistical analyses is oft...
The past few decades have witnessed rapid and unprecedented theoretical progress on the science of c...
BACKGROUND: The impact of unmeasured confounders on causal associations can be studied by means of s...
Omitted variables are one of the most important threats to the identification of causal effects. Sev...
Researchers seeking to establish causal relationships frequently control for variables on the purpor...
Summary We extend the omitted variable bias framework with a suite of tools for sensi...
Political scientists have long been concerned about the validity of survey measurements. Although ma...
Cause-and-effect relations are one of the most valuable types of knowledge sought after throughout t...
Standard variable selection procedures, primarily developed for the construction of outcome predicti...
In observational studies, identifying assumptions may fail, often quietly and without notice, leadin...
Political scientists increasingly use causal graphs, specifically directed acyclic graphs (DAGs), to...
This thesis considers observational studies in which experimental units are not randomly assigned to...
Scholars often assume that the danger posed by omitted variable bias can be ameliorated by the inclu...
The estimation of causal effects has a revered place in all fields of empirical political science, b...
The estimation of causal effects has a revered place in all fields of empirical political science, b...
Many areas of political science focus on causal questions. Evidence from statistical analyses is oft...
The past few decades have witnessed rapid and unprecedented theoretical progress on the science of c...
BACKGROUND: The impact of unmeasured confounders on causal associations can be studied by means of s...
Omitted variables are one of the most important threats to the identification of causal effects. Sev...
Researchers seeking to establish causal relationships frequently control for variables on the purpor...
Summary We extend the omitted variable bias framework with a suite of tools for sensi...
Political scientists have long been concerned about the validity of survey measurements. Although ma...
Cause-and-effect relations are one of the most valuable types of knowledge sought after throughout t...
Standard variable selection procedures, primarily developed for the construction of outcome predicti...
In observational studies, identifying assumptions may fail, often quietly and without notice, leadin...
Political scientists increasingly use causal graphs, specifically directed acyclic graphs (DAGs), to...
This thesis considers observational studies in which experimental units are not randomly assigned to...
Scholars often assume that the danger posed by omitted variable bias can be ameliorated by the inclu...