In this paper, we suggest the new variable selection procedure, called MEC, for linear discriminant rule in the high-dimensional setup. MEC is derived as a second-order unbiased estimator of the misclassification error probability of the linear discriminant rule. It is shown that MEC not only decomposes into \u27fitting\u27and \u27penalty\u27terms like AIC and Mallows Cp, but also possesses an asymptotic optimality in the sense that MEC achieves the smallest possible conditional probability of misclassification in candidate variable sets. Through simulation studies, it is shown that MEC has good performances in the sense of selecting the true variable sets.Revised in February 2013.本文フィルはリンク先を参照のこ
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In this paper, we suggest the new variable selection procedure, called MEC, for linear discriminant ...
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AbstractWe propose a criterion for variable selection in discriminant analysis. This criterion permi...
AbstractIn this paper some ideas on experimental designs are used in discriminant analysis. By consi...
Variable selection is a venerable problem in multivariate statistics. In the context of discriminant...
A new linear discrimination rule, designed for two-group problems with many correlated variables, is...
The problem of classifying a new observation vector into one of the two known groups distributed as ...
Variable selection is an important technique for reducing the dimensionality in multivariate predict...
We propose a computer intensive method for linear dimension reduction which minimizes the classifica...
In multi-class discriminant analysis for High Dimension Low Sample Size settings it is not possible ...
A class of discriminant rules which includes the Fisher’s linear discriminant function and the likel...
University of Minnesota Ph.D. dissertation. June 2013. Major: Statistics. Advisor: Hui Zou. 1 comput...
The problem of testing the direction and collinearity aspects of goodness of fit of a hypothetical d...
In multi-class discriminant analysis for High Dimension Low Sample Size settings it is not possible ...
Subspace selection approaches are powerful tools in pattern classification and data visualization. O...
In this paper, we suggest the new variable selection procedure, called MEC, for linear discriminant ...
A commonly used procedure for reduction of the number of variables in the linear discriminant analys...
AbstractWe propose a criterion for variable selection in discriminant analysis. This criterion permi...
AbstractIn this paper some ideas on experimental designs are used in discriminant analysis. By consi...
Variable selection is a venerable problem in multivariate statistics. In the context of discriminant...
A new linear discrimination rule, designed for two-group problems with many correlated variables, is...
The problem of classifying a new observation vector into one of the two known groups distributed as ...
Variable selection is an important technique for reducing the dimensionality in multivariate predict...
We propose a computer intensive method for linear dimension reduction which minimizes the classifica...
In multi-class discriminant analysis for High Dimension Low Sample Size settings it is not possible ...
A class of discriminant rules which includes the Fisher’s linear discriminant function and the likel...
University of Minnesota Ph.D. dissertation. June 2013. Major: Statistics. Advisor: Hui Zou. 1 comput...
The problem of testing the direction and collinearity aspects of goodness of fit of a hypothetical d...
In multi-class discriminant analysis for High Dimension Low Sample Size settings it is not possible ...
Subspace selection approaches are powerful tools in pattern classification and data visualization. O...