Authors
Bin Cao, Dou Shen, Jian-Tao Sun, Qiang Yang, Zheng Chen
Publication date
2007/6/20
Conference
Proceedings of the 24th international conference on Machine learning
Pages
121-128
Publisher
ACM
Description
We address the problem of feature selection in a kernel space to select the most discriminative and informative features for classification and data analysis. This is a difficult problem because the dimension of a kernel space may be infinite. In the past, little work has been done on feature selection in a kernel space. To solve this problem, we derive a basis set in the kernel space as a first step for feature selection. Using the basis set, we then extend the margin-based feature selection algorithms that are proven effective even when many features are dependent. The selected features form a subspace of the kernel space, in which different state-of-the-art classification algorithms can be applied for classification. We conduct extensive experiments over real and simulated data to compare our proposed method with four baseline algorithms. Both theoretical analysis and experimental results validate the effectiveness of …
Total citations
2007200820092010201120122013201420152016201720182019202020212022202320241712810131063867427422
Scholar articles
B Cao, D Shen, JT Sun, Q Yang, Z Chen - Proceedings of the 24th International Conference on …, 2007