A class of linear classification rules, specifically designed for high-dimensional problems, is proposed. The new rules are based on Gaussian factor models and are able to incorporate successfully the information contained in the sample correlations. Asymptotic results, that allow the number of variables to grow faster than the number of observations, demonstrate that the worst possible expected error rate of the proposed rules converges to the error of the optimal Bayes rule when the postulated model is true, and to a slightly larger constant when this model is a reasonable approximation to the data generating process. Numerical comparisons suggest that, when combined with appropriate variable selection strategies, rules derived fr...
123 pagesDue to the advent of “big data” technologies, mixed data that consist of both categorical a...
With the ever-increasing amount of computational power available, so broadens the horizon of statist...
University of Minnesota Ph.D. dissertation. June 2013. Major: Statistics. Advisor: Hui Zou. 1 comput...
A class of linear classification rules, specifically designed for high-dimensional problems, is prop...
A new linear discrimination rule, designed for two-group problems with many correlated variables, is...
1. A Factor-model linear classification rule for High-Dimensional correlated data 3. Variable select...
Asymptotic properties of two-group supervised classi cation rules designed for problems with much m...
This is a discussion of the article entitled Grouping strategies and thresholding for high dimension...
We introduce a generalization of the approximate factor model that divides the observable variables ...
AbstractThis paper is concerned with pattern recognition for 2-class problems in a High Dimension Lo...
This paper considers the estimation and inference of the low-rank components in high-dimensional mat...
High dimensional data is the situation in which the number of variables included in an analysis appr...
AbstractWe introduce a generalization of the approximate factor model that divides the observable va...
We consider the problem of binary classification when the covariates conditioned on the each of the ...
In the presence of group imbalance and large number of variables problems, traditional classificatio...
123 pagesDue to the advent of “big data” technologies, mixed data that consist of both categorical a...
With the ever-increasing amount of computational power available, so broadens the horizon of statist...
University of Minnesota Ph.D. dissertation. June 2013. Major: Statistics. Advisor: Hui Zou. 1 comput...
A class of linear classification rules, specifically designed for high-dimensional problems, is prop...
A new linear discrimination rule, designed for two-group problems with many correlated variables, is...
1. A Factor-model linear classification rule for High-Dimensional correlated data 3. Variable select...
Asymptotic properties of two-group supervised classi cation rules designed for problems with much m...
This is a discussion of the article entitled Grouping strategies and thresholding for high dimension...
We introduce a generalization of the approximate factor model that divides the observable variables ...
AbstractThis paper is concerned with pattern recognition for 2-class problems in a High Dimension Lo...
This paper considers the estimation and inference of the low-rank components in high-dimensional mat...
High dimensional data is the situation in which the number of variables included in an analysis appr...
AbstractWe introduce a generalization of the approximate factor model that divides the observable va...
We consider the problem of binary classification when the covariates conditioned on the each of the ...
In the presence of group imbalance and large number of variables problems, traditional classificatio...
123 pagesDue to the advent of “big data” technologies, mixed data that consist of both categorical a...
With the ever-increasing amount of computational power available, so broadens the horizon of statist...
University of Minnesota Ph.D. dissertation. June 2013. Major: Statistics. Advisor: Hui Zou. 1 comput...