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  • Search: subject:"High-dimensional classification"
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Subject
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High-dimensional classification 2 Algorithm 1 Algorithmus 1 Classification 1 Competitive swarm optimizer (CSO) 1 Cooperative co-evolutionary algorithm (CCEA) 1 Evolutionary algorithm 1 Evolutionärer Algorithmus 1 Feature selection 1 Feature selection (FS) 1 Klassifikation 1 Large p 1 Linear discriminant analysis (LDA) 1 Mathematical programming 1 Mathematische Optimierung 1 Misclassification rate 1 Naive Bayes 1 Theorie 1 Theory 1 small n 1
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Article 2
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Article in journal 1 Aufsatz in Zeitschrift 1
Language
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English 1 Undetermined 1
Author
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Cao, Longbing 1 Miao, Baiqi 1 Wang, Cheng 1 Xue, Jianwu 1 Zhang, Zhaoyang 1
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Computational Statistics & Data Analysis 1 Computers & operations research : an international journal 1
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ECONIS (ZBW) 1 RePEc 1
Showing 1 - 2 of 2
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A novel cooperative co-evolutionary algorithm with context vector enhancement strategy for feature selection on high-dimensional classification
Zhang, Zhaoyang; Xue, Jianwu - In: Computers & operations research : an international journal 178 (2025), pp. 1-21
Persistent link: https://www.econbiz.de/10015338557
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Optimal feature selection for sparse linear discriminant analysis and its applications in gene expression data
Wang, Cheng; Cao, Longbing; Miao, Baiqi - In: Computational Statistics & Data Analysis 66 (2013) C, pp. 140-149
This work studies the theoretical rules of feature selection in linear discriminant analysis (LDA), and a new feature selection method is proposed for sparse linear discriminant analysis. An l1 minimization method is used to select the important features from which the LDA will be constructed....
Persistent link: https://www.econbiz.de/10010871430
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