We introduce a new approach to variable selection, called Predictive Correlation Screening, for predictor design. Predictive Correlation Screening (PCS) implements false positive control on the selected variables, is well suited to small sample sizes, and is scalable to high dimensions. We establish asymptotic bounds for Familywise Error Rate (FWER), and resultant mean square error of a linear predictor on the selected variables. We apply Predictive Correlation Screening to the following two-stage predictor design problem. An experimenter wants to learn a multivariate predictor of gene expressions based on successive biological samples assayed on mRNA arrays. She assays the whole genome on a few samples and from these assays she selects a s...
Summary. In many clinical settings, a commonly encountered problem is to assess accuracy of a screen...
This article considers the problem of selecting predictors of time to an event from a high-dimension...
This article considers the problem of selecting predictors of time to an event from a high-dimension...
Abstract—A two-stage predictor strategy is introduced in the context of high dimensional data (large...
Most of classical regression modeling methods are based on correlation learning. In ultrahigh dimens...
A stepwise procedure, correlation pursuit (COP), is developed for variable selection under the suffi...
Motivation: With the growth of big data, variable selection has become one of the critical challenge...
This article is concerned with screening features in ultrahigh-dimensional data analysis, which has ...
Contemporary high-throughput experimental and surveying techniques give rise to ultrahigh-dimensiona...
Contemporary high-throughput experimental and surveying techniques give rise to ultrahigh-dimensiona...
Contemporary high-throughput experimental and surveying techniques give rise to ultrahigh-dimensiona...
Contemporary high-throughput experimental and surveying techniques give rise to ultrahigh-dimensiona...
Contemporary high-throughput experimental and surveying techniques give rise to ultrahigh-dimensiona...
A new ensemble dimension reduction regression technique, called Correlated Component Regression (CCR...
Contemporary high-throughput experimental and surveying techniques give rise to ultrahigh-dimensiona...
Summary. In many clinical settings, a commonly encountered problem is to assess accuracy of a screen...
This article considers the problem of selecting predictors of time to an event from a high-dimension...
This article considers the problem of selecting predictors of time to an event from a high-dimension...
Abstract—A two-stage predictor strategy is introduced in the context of high dimensional data (large...
Most of classical regression modeling methods are based on correlation learning. In ultrahigh dimens...
A stepwise procedure, correlation pursuit (COP), is developed for variable selection under the suffi...
Motivation: With the growth of big data, variable selection has become one of the critical challenge...
This article is concerned with screening features in ultrahigh-dimensional data analysis, which has ...
Contemporary high-throughput experimental and surveying techniques give rise to ultrahigh-dimensiona...
Contemporary high-throughput experimental and surveying techniques give rise to ultrahigh-dimensiona...
Contemporary high-throughput experimental and surveying techniques give rise to ultrahigh-dimensiona...
Contemporary high-throughput experimental and surveying techniques give rise to ultrahigh-dimensiona...
Contemporary high-throughput experimental and surveying techniques give rise to ultrahigh-dimensiona...
A new ensemble dimension reduction regression technique, called Correlated Component Regression (CCR...
Contemporary high-throughput experimental and surveying techniques give rise to ultrahigh-dimensiona...
Summary. In many clinical settings, a commonly encountered problem is to assess accuracy of a screen...
This article considers the problem of selecting predictors of time to an event from a high-dimension...
This article considers the problem of selecting predictors of time to an event from a high-dimension...