Title of article :
Using covariates for improving the minimum redundancy maximum relevance feature selection method
Author/Authors :
KURSUN, Olcay Istanbul University - Department of Computer Engineering, TURKEY , SAKAR, C. Okan Bahcesehir University - Department of Computer Engineering, TURKEY , FAVOROV, Oleg University of North Carolina - Department of Biomedical Engineering, USA , AYDIN, Nizamettin Yıldız Technical University - Department of Computer Engineering, TURKEY , GURGEN, Fikret Bogazici University - Department of Computer Engineering, TURKEY
Abstract :
Maximizing the joint dependency with a minimum size of variables is generally the main task of feature selection. For obtaining a minimal subset, while trying to maximize the joint dependency with the target variable, the redundancy among selected variables must be reduced to a minimum. In this paper, we propose a method based on recently popular minimum Redundancy-Maximum Relevance} (mRMR) criterion. The experimental results show that instead of feeding the features themselves into mRMR, feeding the covariates improves the feature selection capability and provides more expressive variable subsets
Keywords :
Mutual information , mRMR , unsupervised learning , support vector machines , SINBAD covariates
Journal title :
Turkish Journal of Electrical Engineering and Computer Sciences
Journal title :
Turkish Journal of Electrical Engineering and Computer Sciences