Classical semiparametric inference with missing outcome data is not robust to contamination of the observed data and a single observation can have arbitrarily large influence on estimation of a parameter of interest. This sensitivity is exacerbated when inverse probability weighting methods are used, which may overweight contaminated observations. Inverse probability weighted, double robust and outcome regression estimators of location and scale parameters are introduced, which are robust to contamination in the sense that their influence function is bounded. Asymptotic properties are deduced and finite sample behaviour studied. Simulated experiments show that contamination can be more serious a threat to the quality of inference than model...
In this dissertation, we propose methodology to account for missing data as well as a strategy to ac...
We consider the mean response estimation and inference in semi-supervised settings in the first two ...
We consider the mean response estimation and inference in semi-supervised settings in the first two ...
Classical semiparametric inference with missing outcome data is not robust to contamination of the o...
Classical semiparametric inference with missing outcome data is not robust to contamination of the o...
Classical semiparametric inference with missing outcome data is not robust to contamination of the o...
We propose an estimator that is more robust than doubly robust estimators, based on weighting comple...
We propose an estimator that is more robust than doubly robust estimators, based on weighting comple...
Commonly used semi-parametric estimators of causal effects, specify parametric models for the prope...
Commonly used semi-parametric estimators of causal effects, specify parametric models for the prope...
Commonly used semi-parametric estimators of causal effects, specify parametric models for the prope...
Commonly used semi-parametric estimators of causal effects, specify parametric models for the prope...
This article reviews inverse probability weighting methods and doubly robust estimation methods for...
<p>When analyzing data with missing data, a commonly used method is the inverse probability weightin...
In data analysis, contamination caused by outliers is inevitable, and robust statistical methods are...
In this dissertation, we propose methodology to account for missing data as well as a strategy to ac...
We consider the mean response estimation and inference in semi-supervised settings in the first two ...
We consider the mean response estimation and inference in semi-supervised settings in the first two ...
Classical semiparametric inference with missing outcome data is not robust to contamination of the o...
Classical semiparametric inference with missing outcome data is not robust to contamination of the o...
Classical semiparametric inference with missing outcome data is not robust to contamination of the o...
We propose an estimator that is more robust than doubly robust estimators, based on weighting comple...
We propose an estimator that is more robust than doubly robust estimators, based on weighting comple...
Commonly used semi-parametric estimators of causal effects, specify parametric models for the prope...
Commonly used semi-parametric estimators of causal effects, specify parametric models for the prope...
Commonly used semi-parametric estimators of causal effects, specify parametric models for the prope...
Commonly used semi-parametric estimators of causal effects, specify parametric models for the prope...
This article reviews inverse probability weighting methods and doubly robust estimation methods for...
<p>When analyzing data with missing data, a commonly used method is the inverse probability weightin...
In data analysis, contamination caused by outliers is inevitable, and robust statistical methods are...
In this dissertation, we propose methodology to account for missing data as well as a strategy to ac...
We consider the mean response estimation and inference in semi-supervised settings in the first two ...
We consider the mean response estimation and inference in semi-supervised settings in the first two ...