Weichan ZhongXiaojun ChenGuowen YuanYiqin LiFeiping Nie
In this paper, we propose a novel Adaptive Discriminant Analysis for semi-supervised feature selection, namely SADA. Instead of computing fixed similarities before performing feature selection, SADA simultaneously learns an adaptive similarity matrix S and a projection matrix W with an iterative method. In each iteration, S is computed from the projected distance with the learned W and W is computed with the learned S. Therefore, SADA can learn better projection matrix W by weakening the effect of noise features with the adaptive similarity matrix. Experimental results on 4 data sets show the superiority of SADA compared to 5 semisupervised feature selection methods.
Weichan ZhongXiaojun ChenFeiping NieJoshua Zhexue Huang
Razieh SheikhpourKamal BerahmandMehrnoush MohammadiHassan Khosravi
Chunhua DongMasoud NaghedolfeiziDawit AberraXiangyan Zeng
Bingbing JiangXingyu WuXiren ZhouYi LiuAnthony G. CohnWeiguo ShengHuanhuan Chen
Wei DuRonald PhlypoTülay Adalı