In this paper we present a sensitivity analysis for drawing inferences about parameters that are not estimable from observed data without additional assumptions. We present the methodology using two different examples: a causal parameter that is not identifiable due to violations of the randomization assumption, and a parameter that is not estimable in the nonparametric model due to measurement error. Existing methods for tackling these problems assume a parametric model for the type of violation to the identifiability assumption, and require the development of new estimators and inference for every new model. The method we present can be used in conjunction with any existing asymptotically linear estimator of an observed data parameter tha...
Many commonly used data sources in the social sciences suffer from non-random measurement error, und...
Many questions in social and biomedical sciences are causal in nature. For example, sociologists an...
We present a method for assessing the sensitivity of the true causal effect to unmeasured confoundin...
Suppose one wishes to estimate a causal parameter given a sample of observations. This requires maki...
In this dissertation, we explore sensitivity analyses under three different types of incomplete data...
In this dissertation, we explore sensitivity analyses under three different types of incomplete data...
Unmeasured confounding may undermine the validity of causal inference with observational studies. Se...
Causal inference under the potential outcome framework relies on the strongly ignorable treatment as...
Causal inference under the potential outcome framework relies on the strongly ignorable treatment as...
Establishing cause-effect relationships from observational data often relies on untestable assumptio...
In this dissertation, we explore sensitivity analyses under three different types of incomplete data...
A fundamental challenge in observational causal inference is that assumptions about unconfoundedness...
Many commonly used data sources in the social sciences suffer from non-random measurement error, und...
Many commonly used data sources in the social sciences suffer from non-random measurement error, und...
Many questions in social and biomedical sciences are causal in nature. For example, sociologists an...
Many commonly used data sources in the social sciences suffer from non-random measurement error, und...
Many questions in social and biomedical sciences are causal in nature. For example, sociologists an...
We present a method for assessing the sensitivity of the true causal effect to unmeasured confoundin...
Suppose one wishes to estimate a causal parameter given a sample of observations. This requires maki...
In this dissertation, we explore sensitivity analyses under three different types of incomplete data...
In this dissertation, we explore sensitivity analyses under three different types of incomplete data...
Unmeasured confounding may undermine the validity of causal inference with observational studies. Se...
Causal inference under the potential outcome framework relies on the strongly ignorable treatment as...
Causal inference under the potential outcome framework relies on the strongly ignorable treatment as...
Establishing cause-effect relationships from observational data often relies on untestable assumptio...
In this dissertation, we explore sensitivity analyses under three different types of incomplete data...
A fundamental challenge in observational causal inference is that assumptions about unconfoundedness...
Many commonly used data sources in the social sciences suffer from non-random measurement error, und...
Many commonly used data sources in the social sciences suffer from non-random measurement error, und...
Many questions in social and biomedical sciences are causal in nature. For example, sociologists an...
Many commonly used data sources in the social sciences suffer from non-random measurement error, und...
Many questions in social and biomedical sciences are causal in nature. For example, sociologists an...
We present a method for assessing the sensitivity of the true causal effect to unmeasured confoundin...