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Preservation of local linearity by neighborhood subspace scaling for solving the pre-image problem

Preservation of local linearity by neighborhood subspace scaling for solving the pre-image problem
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摘要 An important issue involved in kernel methods is the pre-image problem. However, it is an ill-posed problem, as the solution is usually nonexistent or not unique. In contrast to direct methods aimed at minimizing the distance in feature space, indirect methods aimed at constructing approximate equivalent models have shown outstanding performance. In this paper, an indirect method for solving the pre-image problem is proposed. In the proposed algorithm, an inverse mapping process is constructed based on a novel framework that preserves local linearity. In this framework, a local nonlinear transformation is implicitly conducted by neighborhood subspace scaling transformation to preserve the local linearity between feature space and input space. By extending the inverse mapping process to test samples, we can obtain pre-images in input space. The proposed method is non-iterative,and can be used for any kernel functions. Experimental results based on image denoising using kernel principal component analysis(PCA) show that the proposed method outperforms the state-of-the-art methods for solving the pre-image problem. An important issue involved in kernel methods is the pre-image problem. However, it is an ill-posed problem, as the solution is usually nonexistent or not unique. In contrast to direct methods aimed at minimizing the distance in feature space, indirect methods aimed at constructing approximate equivalent models have shown outstanding performance. In this paper, an indirect method for solving the pre-image problem is proposed. In the proposed algorithm, an inverse mapping process is constructed based on a novel framework that preserves local linearity. In this framework, a local nonlinear transformation is implicitly conducted by neighborhood subspace scaling transformation to preserve the local linearity between feature space and input space. By extending the inverse mapping process to test samples, we can obtain pre-images in input space. The proposed method is non-iterative, and can be used for any kernel functions. Experimental results based on image denoising using kernel principal component analysis (PCA) show that the proposed method outperforms the state-of-the-art methods for solving the pre-image problem.
机构地区 Institute of
出处 《Journal of Zhejiang University-Science C(Computers and Electronics)》 SCIE EI 2014年第4期254-264,共11页 浙江大学学报C辑(计算机与电子(英文版)
基金 Project supported by the National Science and Technology Major Project of China(No.2012EX01027001-002) the Fun-damental Research Funds for the Central Universities,China
关键词 Kernel method Pre-image problem Nonlinear denoising Kernel PCA Local linearity preserving Kernel method, Pre-image problem, Nonlinear denoising, Kernel PCA, Local linearity preserving
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参考文献26

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