Interaction effects have been consistently found important in explaining the variation in outcomes in many scientific research fields. Yet, in practice, variable selection including interactions is complicated due to the limited sample size, conflicting philosophies regarding model interpretability, and accompanying amplified multiple-testing problems. The lack of statistically sound algorithms for automatic variable selection with interactions has discouraged activities in exploring important interaction effects. In this article, we investigated issues of selecting interactions from three aspects: (1) What is the model space to be searched? (2) How is the hypothesis-testing performed? (3) How to address the multiple-testing issue? We propo...
It is often preferable to simplify the estimation of treatment effects on multiple outcomes by using...
none1noThis thesis presents a creative and practical approach to dealing with the problem of selecti...
This talk begins with a contrast of exploratory data analysis (a la Tukey) and formal analysis. Cha...
In genomic studies, datasets with a small sample size and a large number of potential predictors are...
Kooperberg08 proposed a two-stage testing procedure to screen for significant interactions in genome...
Kooperberg and LeBlanc (2008) proposed a two-stage testing procedure to screen for significant inter...
In many scientific and medical settings, large-scale experiments are generating large quantities of ...
An important step in building a multiple regression model is the selection of predictors. In genomi...
Including pairwise interactions between the predictors of a regression model can produce better pred...
Background\ud The problem of learning causal influences from data has recently attracted much attent...
<div>Introduction: Since the introduction of the LASSO, computational approaches to variable selecti...
BACKGROUND: Molecular data, e.g. arising from microarray technology, is often used for predicting s...
Objective To give a comprehensive comparison of the performance of commonly applied interaction test...
Background The problems of correlation and classification are long-standing in the fields of statist...
We discuss Bayesian approaches to multiple comparison problems, using a decision theoretic perspecti...
It is often preferable to simplify the estimation of treatment effects on multiple outcomes by using...
none1noThis thesis presents a creative and practical approach to dealing with the problem of selecti...
This talk begins with a contrast of exploratory data analysis (a la Tukey) and formal analysis. Cha...
In genomic studies, datasets with a small sample size and a large number of potential predictors are...
Kooperberg08 proposed a two-stage testing procedure to screen for significant interactions in genome...
Kooperberg and LeBlanc (2008) proposed a two-stage testing procedure to screen for significant inter...
In many scientific and medical settings, large-scale experiments are generating large quantities of ...
An important step in building a multiple regression model is the selection of predictors. In genomi...
Including pairwise interactions between the predictors of a regression model can produce better pred...
Background\ud The problem of learning causal influences from data has recently attracted much attent...
<div>Introduction: Since the introduction of the LASSO, computational approaches to variable selecti...
BACKGROUND: Molecular data, e.g. arising from microarray technology, is often used for predicting s...
Objective To give a comprehensive comparison of the performance of commonly applied interaction test...
Background The problems of correlation and classification are long-standing in the fields of statist...
We discuss Bayesian approaches to multiple comparison problems, using a decision theoretic perspecti...
It is often preferable to simplify the estimation of treatment effects on multiple outcomes by using...
none1noThis thesis presents a creative and practical approach to dealing with the problem of selecti...
This talk begins with a contrast of exploratory data analysis (a la Tukey) and formal analysis. Cha...