Feature selection using localized generalization error for supervised classification problems using RBFNN

2008 ◽  
Vol 41 (12) ◽  
pp. 3706-3719 ◽  
Author(s):  
Wing W.Y. Ng ◽  
Daniel S. Yeung ◽  
Michael Firth ◽  
Eric C.C. Tsang ◽  
Xi-Zhao Wang
Author(s):  
ALEXSEY LIAS-RODRÍGUEZ ◽  
GUILLERMO SANCHEZ-DIAZ

Typical testors are useful tools for feature selection and for determining feature relevance in supervised classification problems. Nowadays, computing all typical testors of a training matrix is very expensive; all reported algorithms have exponential complexity depending on the number of columns in the matrix. In this paper, we introduce the faster algorithm BR (Boolean Recursive), called fast-BR algorithm, that is based on elimination of gaps and reduction of columns. Fast-BR algorithm is designed to generate all typical testors from a training matrix, requiring a reduced number of operations. Experimental results using this fast implementation and the comparison with other state-of-the-art related algorithms that generate typical testors are presented.


2014 ◽  
Vol 146 ◽  
pp. 104-112 ◽  
Author(s):  
Wing W.Y. Ng ◽  
Xue-Ling Liang ◽  
Jincheng Li ◽  
Daniel S. Yeung ◽  
Patrick P.K. Chan

2021 ◽  
Vol 25 (1) ◽  
pp. 21-34
Author(s):  
Rafael B. Pereira ◽  
Alexandre Plastino ◽  
Bianca Zadrozny ◽  
Luiz H.C. Merschmann

In many important application domains, such as text categorization, biomolecular analysis, scene or video classification and medical diagnosis, instances are naturally associated with more than one class label, giving rise to multi-label classification problems. This has led, in recent years, to a substantial amount of research in multi-label classification. More specifically, feature selection methods have been developed to allow the identification of relevant and informative features for multi-label classification. This work presents a new feature selection method based on the lazy feature selection paradigm and specific for the multi-label context. Experimental results show that the proposed technique is competitive when compared to multi-label feature selection techniques currently used in the literature, and is clearly more scalable, in a scenario where there is an increasing amount of data.


2021 ◽  
pp. 115017
Author(s):  
Marta Baldomero-Naranjo ◽  
Luisa I. Martínez-Merino ◽  
Antonio M. Rodríguez-Chía

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