In regression problems where the number of predictors greatly exceeds the number of observations, conventional regression techniques may produce unsatisfactory results. We describe a technique called supervised principal components that can be applied to this type of problem. Supervised principal components is similar to conventional principal components analysis except that it uses a subset of the predictors that are selected based on their association with the outcome. Supervised principal components can be applied to regression and generalized regression problems such as survival analysis. It compares favorably to other techniques for this type of problem, and can also account for the effects of other covariates and help identify which p...
A new ensemble dimension reduction regression technique, called Correlated Component Regression (CCR...
This dissertation enhances the conventional Principal Component Analysis for the purpose of Forecast...
Methods for global measurement of transcript abundance such as microarrays and RNA-Seq generate data...
In regression problems where the number of predictors greatly exceeds the number of observations, co...
Dimension reduction for regression is a prominent issue today because technological advances now all...
In this paper we demonstrate that a higher-ranking principal component of the predictor tends to hav...
In high-dimensional prediction problems, where the number of features may greatly exceed the number ...
The purpose of many microarray studies is to find the association between gene expression and sample...
One problem of interest is to relate genes to survival outcomes of patients for the purpose of build...
Motivation: Gene set analysis allows formal testing of subtle but coordinated changes in a group of ...
Multiple regression with correlated explanatory variables is relevant to a broad range of problems i...
Multiple regression with correlated explanatory variables is relevant to a broad range of problems i...
In this paper we present a new stepwise method for selecting predictor variables in linear regressio...
Gower and Blasius (Quality and Quantity, 39, 2005) proposed the notion of multivariate predictabilit...
The regression coefficient estimates from ordinary least squares (OLS) have a low probability of bei...
A new ensemble dimension reduction regression technique, called Correlated Component Regression (CCR...
This dissertation enhances the conventional Principal Component Analysis for the purpose of Forecast...
Methods for global measurement of transcript abundance such as microarrays and RNA-Seq generate data...
In regression problems where the number of predictors greatly exceeds the number of observations, co...
Dimension reduction for regression is a prominent issue today because technological advances now all...
In this paper we demonstrate that a higher-ranking principal component of the predictor tends to hav...
In high-dimensional prediction problems, where the number of features may greatly exceed the number ...
The purpose of many microarray studies is to find the association between gene expression and sample...
One problem of interest is to relate genes to survival outcomes of patients for the purpose of build...
Motivation: Gene set analysis allows formal testing of subtle but coordinated changes in a group of ...
Multiple regression with correlated explanatory variables is relevant to a broad range of problems i...
Multiple regression with correlated explanatory variables is relevant to a broad range of problems i...
In this paper we present a new stepwise method for selecting predictor variables in linear regressio...
Gower and Blasius (Quality and Quantity, 39, 2005) proposed the notion of multivariate predictabilit...
The regression coefficient estimates from ordinary least squares (OLS) have a low probability of bei...
A new ensemble dimension reduction regression technique, called Correlated Component Regression (CCR...
This dissertation enhances the conventional Principal Component Analysis for the purpose of Forecast...
Methods for global measurement of transcript abundance such as microarrays and RNA-Seq generate data...