Title :
Subspace based linear programming support vector machines
Author :
Takeuchi, Syogo ; Kitamura, Takuya ; Abe, Shigeo ; Fukui, Kazuhiro
Author_Institution :
Grad. Sch. of Eng., Kobe Univ., Kobe, Japan
Abstract :
In subspace methods, the subspace associated with a class is represented by a small number of vectors called dictionaries and using the dictionaries the similarity measure is defined and an input is classified into the class with the highest similarity. Usually, each dictionary is given an equal weight. But if subspaces of different classes overlap, the similarity measures for the overlapping regions will not give useful information for classification. In this paper, we propose optimizing the weights for the dictionaries using the idea of support vector machines (SVMs). Namely, first we map the input space into the empirical feature space, perform kernel principal component analysis (KPCA) for each class, and define a similarity measure. Then considering that the similarity measure corresponds to the hyperplane, we formulate the optimization problem as maximizing the margin between the class associated with the dictionaries and the remaining classes. The optimization problem results in all-at-once formulation of linear SVMs. We demonstrate the effectiveness of the proposed method with that of the conventional methods for two-class problems.
Keywords :
dictionaries; linear programming; principal component analysis; support vector machines; dictionaries; kernel principal component analysis; linear programming support vector machines; optimization problem; subspace methods; Constraint optimization; Dictionaries; Kernel; Linear programming; Neural networks; Performance evaluation; Principal component analysis; Prototypes; Support vector machine classification; Support vector machines;
Conference_Titel :
Neural Networks, 2009. IJCNN 2009. International Joint Conference on
Conference_Location :
Atlanta, GA
Print_ISBN :
978-1-4244-3548-7
Electronic_ISBN :
1098-7576
DOI :
10.1109/IJCNN.2009.5178762