Semi-supervised dimension reduction using trace ratio criterion
In this brief, we address the trace ratio (TR) problem for semi-supervised dimension reduction. We first reformulate the objective function of the recent work semi-supervised discriminant analysis (SDA) in a TR form. We also observe that in SDA the low-dimensional data representation F is constraine...
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sg-ntu-dr.10356-991842020-05-28T07:19:04Z Semi-supervised dimension reduction using trace ratio criterion Huang, Yi Xu, Dong Nie, Feiping School of Computer Engineering DRNTU::Engineering::Computer science and engineering In this brief, we address the trace ratio (TR) problem for semi-supervised dimension reduction. We first reformulate the objective function of the recent work semi-supervised discriminant analysis (SDA) in a TR form. We also observe that in SDA the low-dimensional data representation F is constrained to be in the linear subspace spanned by the training data matrix X (i.e., F = XT W). In order to relax this hard constraint, we introduce a flexible regularizer ||F - XT W||2 which models the regression residual into the reformulated objective function. With such relaxation, our method referred to as TR based flexible SDA (TR-FSDA) can better cope with data sampled from a certain type of nonlinear manifold that is somewhat close to a linear subspace. In order to address the non-trivial optimization problem in TR-FSDA, we further develop an iterative algorithm to simultaneously solve for the low-dimensional data representation F and the projection matrix W. Moreover, we theoretically prove that our iterative algorithm converges to the optimum based on the Newton-Raphson method. The experiments on two face databases, one shape image database and one webpage database demonstrate that TR-FSDA outperforms the existing semi-supervised dimension reduction methods. 2013-09-16T07:10:33Z 2019-12-06T20:04:13Z 2013-09-16T07:10:33Z 2019-12-06T20:04:13Z 2012 2012 Journal Article Huang, Y., Xu, D., & Nie, F. (2012). Semi-Supervised Dimension Reduction Using Trace Ratio Criterion. IEEE Transactions on Neural Networks and Learning Systems, 23(3), 519-526. 2162-237X https://hdl.handle.net/10356/99184 http://hdl.handle.net/10220/13485 10.1109/TNNLS.2011.2178037 en IEEE transactions on neural networks and learning systems © 2012 IEEE |
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DRNTU::Engineering::Computer science and engineering Huang, Yi Xu, Dong Nie, Feiping Semi-supervised dimension reduction using trace ratio criterion |
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In this brief, we address the trace ratio (TR) problem for semi-supervised dimension reduction. We first reformulate the objective function of the recent work semi-supervised discriminant analysis (SDA) in a TR form. We also observe that in SDA the low-dimensional data representation F is constrained to be in the linear subspace spanned by the training data matrix X (i.e., F = XT W). In order to relax this hard constraint, we introduce a flexible regularizer ||F - XT W||2 which models the regression residual into the reformulated objective function. With such relaxation, our method referred to as TR based flexible SDA (TR-FSDA) can better cope with data sampled from a certain type of nonlinear manifold that is somewhat close to a linear subspace. In order to address the non-trivial optimization problem in TR-FSDA, we further develop an iterative algorithm to simultaneously solve for the low-dimensional data representation F and the projection matrix W. Moreover, we theoretically prove that our iterative algorithm converges to the optimum based on the Newton-Raphson method. The experiments on two face databases, one shape image database and one webpage database demonstrate that TR-FSDA outperforms the existing semi-supervised dimension reduction methods. |
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School of Computer Engineering |
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School of Computer Engineering Huang, Yi Xu, Dong Nie, Feiping |
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Article |
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Huang, Yi Xu, Dong Nie, Feiping |
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Huang, Yi |
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Semi-supervised dimension reduction using trace ratio criterion |
title_short |
Semi-supervised dimension reduction using trace ratio criterion |
title_full |
Semi-supervised dimension reduction using trace ratio criterion |
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Semi-supervised dimension reduction using trace ratio criterion |
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Semi-supervised dimension reduction using trace ratio criterion |
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semi-supervised dimension reduction using trace ratio criterion |
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2013 |
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https://hdl.handle.net/10356/99184 http://hdl.handle.net/10220/13485 |
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