Ianisse QuinzánJosé Martínez SotocaFiliberto Pla
In this contribution a feature selection method in semi-supervised problems is proposed. This method selects variables using a feature clustering strategy, using a combination of supervised and unsupervised feature distance measure, which is based on Conditional Mutual Information and Conditional Entropy. Real databases were analyzed with different ratios between labelled and unlabelled samples in the training set, showing the satisfactory behaviour of the proposed approach.
Abhay Kumar AlokSriparna SahaAsif Ekbal
Sriparna SahaAsif EkbalAbhay Kumar AlokR. R. Shantha Spandana
Jim Jing-Yan WangYao JinYijun Sun
Yazhou RenGuoji ZhangGuoxian Yu
Jiangtao RenZhengyuan QiuWei FanHong ChengPhilip S. Yu