Tournament screening cum EBIC for feature selection with high-dimensional feature spaces

被引:0
|
作者
CHEN ZeHua1 & CHEN JiaHua2 1 Department of Statistics & Applied Probability
机构
关键词
extended Bayes information criterion; feature selection; penalized likelihood; reduc-tion of dimensionality; small-n-large-P; sure screening;
D O I
暂无
中图分类号
O212 [数理统计];
学科分类号
020208 ; 070103 ; 0714 ;
摘要
The feature selection characterized by relatively small sample size and extremely high-dimensional feature space is common in many areas of contemporary statistics.The high dimensionality of the feature space causes serious diffculties:(i) the sample correlations between features become high even if the features are stochastically independent;(ii) the computation becomes intractable.These diffculties make conventional approaches either inapplicable or ine?cient.The reduction of dimensionality of the feature space followed by low dimensional approaches appears the only feasible way to tackle the problem.Along this line,we develop in this article a tournament screening cum EBIC approach for feature selection with high dimensional feature space.The procedure of tournament screening mimics that of a tournament.It is shown theoretically that the tournament screening has the sure screening property,a necessary property which should be satisfied by any valid screening procedure.It is demonstrated by numerical studies that the tournament screening cum EBIC approach enjoys desirable properties such as having higher positive selection rate and lower false discovery rate than other approaches.
引用
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页码:1327 / 1341
页数:15
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