In this paper we demonstrate that a higher-ranking principal component of the predictor tends to have a stronger correlation with the response in single index models and sufficient dimension reduction. This tendency holds even though the orientation of the predictor is not designed in any way to be related to the response. This provides a probabilistic explanation of why it is often beneficial to perform regression on principal components-a practice commonly known as principal component regression but whose validity has long been debated. This result is a generalization of earlier results by Li (2007) [19], Artemiou and Li (2009) [2], and Ni (2011) [24], where the same phenomenon was conjectured and rigorously demonstrated for linear regres...
We demonstrate that, in a regression setting with a Hilbertian predictor, a response variable is mor...
We demonstrate that, in a regression setting with a Hilbertian predictor, a response variable is mor...
University of Minnesota Ph.D. dissertation. May 2009. Major: Statistics. Advisor: Ralph Dennis Cook....
In this paper we demonstrate that a higher-ranking principal component of the predictor tends to hav...
In this paper we demonstrate that a higher-ranking principal component of the predictor tends to hav...
We provide a remedy for two concerns that have dogged the use of prin-cipal components in regression...
In this note we give a probabilistic explanation of a phenomenon that is frequently observed but wh...
Dimension reduction for regression is a prominent issue today because technological advances now all...
Abstract. We provide a remedy for two concerns that have dogged the use of principal components in r...
Principal component regression has been perceived as a remedy for multi-collinearity. Cook (2007) su...
We demonstrate that, in a regression setting with a Hilbertian predictor, a response variable is mor...
This thesis has two themes: (1) the predictive potential of principal components in regression, and ...
We demonstrate that, in a regression setting with a Hilbertian predictor, a response variable is mor...
We demonstrate that, in a regression setting with a Hilbertian predictor, a response variable is mor...
In this short note, recent results on the predictive power of kernel principal component in a regres...
We demonstrate that, in a regression setting with a Hilbertian predictor, a response variable is mor...
We demonstrate that, in a regression setting with a Hilbertian predictor, a response variable is mor...
University of Minnesota Ph.D. dissertation. May 2009. Major: Statistics. Advisor: Ralph Dennis Cook....
In this paper we demonstrate that a higher-ranking principal component of the predictor tends to hav...
In this paper we demonstrate that a higher-ranking principal component of the predictor tends to hav...
We provide a remedy for two concerns that have dogged the use of prin-cipal components in regression...
In this note we give a probabilistic explanation of a phenomenon that is frequently observed but wh...
Dimension reduction for regression is a prominent issue today because technological advances now all...
Abstract. We provide a remedy for two concerns that have dogged the use of principal components in r...
Principal component regression has been perceived as a remedy for multi-collinearity. Cook (2007) su...
We demonstrate that, in a regression setting with a Hilbertian predictor, a response variable is mor...
This thesis has two themes: (1) the predictive potential of principal components in regression, and ...
We demonstrate that, in a regression setting with a Hilbertian predictor, a response variable is mor...
We demonstrate that, in a regression setting with a Hilbertian predictor, a response variable is mor...
In this short note, recent results on the predictive power of kernel principal component in a regres...
We demonstrate that, in a regression setting with a Hilbertian predictor, a response variable is mor...
We demonstrate that, in a regression setting with a Hilbertian predictor, a response variable is mor...
University of Minnesota Ph.D. dissertation. May 2009. Major: Statistics. Advisor: Ralph Dennis Cook....