3 research outputs found

    On the translation-invariance of image distance metric

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    Dimensionality reduction by kernel CCA in reproducing kernel hilbert spaces

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    Master'sMASTER OF SCIENC

    A Transductive Framework of Distance Metric Learning by Spectral Dimensionality Reduction

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    Distance metric learning and nonlinear dimensionality reduction are two interesting and active topics in recent years. However, the connection between them is not thoroughly studied yet. In this paper, a transductive framework of distance metric learning is proposed and its close connection with many nonlinear spectral dimensionality reduction methods is elaborated. Furthermore, we prove a representer theorem for our framework, linking it with function estimation in an RKHS, and making it possible for generalization to unseen test samples. In our framework, it suffices to solve a sparse eigenvalue problem, thus datasets with 10 5 samples can be handled. Finally, experiment results on synthetic data, several UCI databases and the MNIST handwritten digit database are shown. 1
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