Primal-Dual Path-Following Algorithms for Determinant Maximization Problems With Linear Matrix Inequalities

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作者
Kim-Chuan Toh
机构
[1] National University of Singapore,Department of Mathematics
关键词
determinant optimization; semidefinite programming; predictor-corrector;
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摘要
Primal-dual path-following algorithms are considered for determinant maximization problem (maxdet-problem). These algorithms apply Newton's method to a primal-dual central path equation similar to that in semidefinite programming (SDP) to obtain a Newton system which is then symmetrized to avoid nonsymmetric search direction. Computational aspects of the algorithms are discussed, including Mehrotra-type predictor-corrector variants. Focusing on three different symmetrizations, which leads to what are known as the AHO, H..K..M and NT directions in SDP, numerical results for various classes of maxdet-problem are given. The computational results show that the proposed algorithms are efficient, robust and accurate.
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页码:309 / 330
页数:21
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