Solving Large-Scale Least Squares Semidefinite Programming by Alternating Direction Methods

The well-known least squares semidefinite programming (LSSDP) problem seeks the nearest adjustment of a given symmetric matrix in the intersection of the cone of positive semidefinite matrices and a set of linear constraints, and it captures many applications in diversing fields. The task of solving...

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Vydáno v:SIAM journal on matrix analysis and applications Ročník 32; číslo 1; s. 136 - 152
Hlavní autoři: He, Bingsheng, Xu, Minghua, Yuan, Xiaoming
Médium: Journal Article
Jazyk:angličtina
Vydáno: Philadelphia, PA Society for Industrial and Applied Mathematics 01.01.2011
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ISSN:0895-4798, 1095-7162
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Shrnutí:The well-known least squares semidefinite programming (LSSDP) problem seeks the nearest adjustment of a given symmetric matrix in the intersection of the cone of positive semidefinite matrices and a set of linear constraints, and it captures many applications in diversing fields. The task of solving large-scale LSSDP with many linear constraints, however, is numerically challenging. This paper mainly shows the applicability of the classical alternating direction method (ADM) for solving LSSDP and convinces the efficiency of the ADM approach. We compare the ADM approach with some other existing approaches numerically, and we show the superiority of ADM for solving large-scale LSSDP.
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ISSN:0895-4798
1095-7162
DOI:10.1137/090768813