We propose novel methods to tackle two problems: the misspecified model with measurement error and high-dimensional binary classification, both have a crucial impact on applications in public health. The first problem exists in the epidemiology practice. Epidemiologists often categorize a continuous risk predictor since categorization is thought to be more robust and interpretable, even when the true risk model is not a categorical one. Thus, their goal is to fit the categorical model and interpret the categorical parameters. We address the question: with measurement error and categorization, how can we do what epidemiologists want, namely to estimate the parameters of the categorical model that would have been estimated if the true predict...
BACKGROUND: The onset of silent diseases such as type 2 diabetes is often registered through self-re...
Statistical classification has a respected tradition in the support of medical diagnosis. Early app...
This dissertation focuses on developing high dimensional regression techniques to analyze large scal...
We propose novel methods to tackle two problems: the misspecified model with measurement error and h...
In this thesis, we propose statistical models for addressing commonly encountered data types and stu...
Understanding high-dimensional data has become essential for practitioners across many disciplines. ...
© 2018, Institute of Mathematical Statistics. All rights reserved. Epidemiologists often categorize ...
Epidemiologists often categorize a continuous risk predictor, even when the true risk model is not a...
The theme of this dissertation is to develop robust statistical approaches for the high-dimensional ...
Several statistical problems can be described as estimation problem, where the goal is to learn a se...
Recently emerging large-scale biomedical data pose exciting opportunities for scientific discoveries...
Statistical learning has been applied in business and health care analytics. Predictive models are f...
This dissertation consists of two main projects in the area of measurement error models with applica...
As a probabilistic statistical classification model, logistic regression (or logit regression) is wi...
In modern research, massive high-dimensional data are frequently generated by advancing technologies...
BACKGROUND: The onset of silent diseases such as type 2 diabetes is often registered through self-re...
Statistical classification has a respected tradition in the support of medical diagnosis. Early app...
This dissertation focuses on developing high dimensional regression techniques to analyze large scal...
We propose novel methods to tackle two problems: the misspecified model with measurement error and h...
In this thesis, we propose statistical models for addressing commonly encountered data types and stu...
Understanding high-dimensional data has become essential for practitioners across many disciplines. ...
© 2018, Institute of Mathematical Statistics. All rights reserved. Epidemiologists often categorize ...
Epidemiologists often categorize a continuous risk predictor, even when the true risk model is not a...
The theme of this dissertation is to develop robust statistical approaches for the high-dimensional ...
Several statistical problems can be described as estimation problem, where the goal is to learn a se...
Recently emerging large-scale biomedical data pose exciting opportunities for scientific discoveries...
Statistical learning has been applied in business and health care analytics. Predictive models are f...
This dissertation consists of two main projects in the area of measurement error models with applica...
As a probabilistic statistical classification model, logistic regression (or logit regression) is wi...
In modern research, massive high-dimensional data are frequently generated by advancing technologies...
BACKGROUND: The onset of silent diseases such as type 2 diabetes is often registered through self-re...
Statistical classification has a respected tradition in the support of medical diagnosis. Early app...
This dissertation focuses on developing high dimensional regression techniques to analyze large scal...