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Sixth IEEE International Conference on Data Mining (ICDM'06)
Adaptive Kernel Principal Component Analysis with Unsupervised Learning of Kernels
Hong Kong
December 18-December 22
ISBN: 0-7695-2701-9
Daoqiang Zhang, Nanjing University, China
Zhi-Hua Zhou, Nanjing University, China
Songcan Chen, NUAA, China
Choosing an appropriate kernel is one of the key problems in kernel-based methods. Most existing kernel selection methods require that the class labels of the training examples are known. In this paper, we propose an adaptive kernel selection method for kernel principal component analysis, which can effectively learn the kernels when the class labels of the training examples are not available. By iteratively optimizing a novel criterion, the proposed method can achieve nonlinear feature extraction and unsupervised kernel learning simultaneously. Moreover, a noniterative approximate algorithm is developed. The effectiveness of the proposed algorithms are validated on UCI datasets and the COIL-20 object recognition database.
Citation:
Daoqiang Zhang, Zhi-Hua Zhou, Songcan Chen, "Adaptive Kernel Principal Component Analysis with Unsupervised Learning of Kernels," icdm, pp.1178-1182, Sixth IEEE International Conference on Data Mining (ICDM'06), 2006
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