In this dissertation, we explore sensitivity analyses under three different types of incomplete data problems, including missing outcomes, missing outcomes and missing predictors, potential outcomes in \emph{Rubin causal model (RCM)}. The first sensitivity analysis is conducted for the \emph{missing completely at random (MCAR)} assumption in frequentist inference; the second one is conducted for the \emph{missing at random (MAR)} assumption in likelihood inference; the third one is conducted for one novel assumption, the ``sixth assumption\u27\u27 proposed for the robustness of instrumental variable estimand in causal inference
In this thesis we develop methods for dealing with missing data in a univariate response variable wh...
Classical inferential procedures induce conclusions from a set of data to a population of interest, ...
Incomplete data abound in epidemiological and clinical studies. When the missing data process is not...
In this dissertation, we explore sensitivity analyses under three different types of incomplete data...
Non-compliance is very common in randomized experiments involving human participants. The intent-to-...
Causal inference is often phrased as a missing data problem – for every unit, only the response to o...
Estimating causal effects from incomplete data requires additional and inherently untestable assumpt...
Incomplete data models typically involve strong untestable assumptions about the missing data distri...
Over the last decade a variety of models to analyse incomplete multivariate and longitudinal data ha...
All models for incomplete data either explicitly make assumptions about aspects of the distribution ...
Abstract Background Within epidemiological and clinical research, missing data are a common issue an...
Even though models for incomplete longitudinal data are in common use, they are surrounded with prob...
In this paper we present a sensitivity analysis for drawing inferences about parameters that are not...
We develop and demonstrate methods to perform sensitivity analyses to assess sensitivity to plausibl...
Even though models for incomplete longitudinal data are in common use, they are surrounded with prob...
In this thesis we develop methods for dealing with missing data in a univariate response variable wh...
Classical inferential procedures induce conclusions from a set of data to a population of interest, ...
Incomplete data abound in epidemiological and clinical studies. When the missing data process is not...
In this dissertation, we explore sensitivity analyses under three different types of incomplete data...
Non-compliance is very common in randomized experiments involving human participants. The intent-to-...
Causal inference is often phrased as a missing data problem – for every unit, only the response to o...
Estimating causal effects from incomplete data requires additional and inherently untestable assumpt...
Incomplete data models typically involve strong untestable assumptions about the missing data distri...
Over the last decade a variety of models to analyse incomplete multivariate and longitudinal data ha...
All models for incomplete data either explicitly make assumptions about aspects of the distribution ...
Abstract Background Within epidemiological and clinical research, missing data are a common issue an...
Even though models for incomplete longitudinal data are in common use, they are surrounded with prob...
In this paper we present a sensitivity analysis for drawing inferences about parameters that are not...
We develop and demonstrate methods to perform sensitivity analyses to assess sensitivity to plausibl...
Even though models for incomplete longitudinal data are in common use, they are surrounded with prob...
In this thesis we develop methods for dealing with missing data in a univariate response variable wh...
Classical inferential procedures induce conclusions from a set of data to a population of interest, ...
Incomplete data abound in epidemiological and clinical studies. When the missing data process is not...