Low rank approximation of the symmetric positive semidefinite matrix

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摘要

In this paper, we consider the low rank approximation of the symmetric positive semidefinite matrix, which arises in machine learning, quantum chemistry and inverse problem. We first characterize the feasible set by X=YYT,Y∈Rn×k, and then transform low rank approximation into an unconstrained optimization problem. Finally, we use the nonlinear conjugate gradient method with exact line search to compute the optimal low rank symmetric positive semidefinite approximation of the given matrix. Numerical examples show that the new method is feasible and effective.

论文关键词:68W25,65F30,65K10,15A63,Low rank approximation,Symmetric positive semidefinite matrix,Unconstrained optimization,Feasible set,Nonlinear conjugate gradient method

论文评审过程:Received 30 July 2012, Revised 16 August 2013, Available online 12 October 2013.

论文官网地址:https://doi.org/10.1016/j.cam.2013.09.080