Extension of primal-dual interior point algorithms to symmetric cones

被引:0
作者
S.H. Schmieta
F. Alizadeh
机构
[1] Axioma Inc.,
[2] Marietta,undefined
[3] GA USA 30068,undefined
[4] e-mail: sschmieta@axiomainc.com,undefined
[5] RUTCOR and School of Business,undefined
[6] Rutgers University,undefined
[7] Piscataway,undefined
[8] NJ USA 08854-8003,undefined
[9] e-mail: alizadeh@rutcor.rutgers.edu,undefined
来源
Mathematical Programming | 2003年 / 96卷
关键词
Interior Point; Jordan Algebra; Semidefinite Programming; Symmetric Cone; Euclidean Jordan Algebra;
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学科分类号
摘要
 In this paper we show that the so-called commutative class of primal-dual interior point algorithms which were designed by Monteiro and Zhang for semidefinite programming extends word-for-word to optimization problems over all symmetric cones. The machinery of Euclidean Jordan algebras is used to carry out this extension. Unlike some non-commutative algorithms such as the XS+SX method, this class of extensions does not use concepts outside of the Euclidean Jordan algebras. In particular no assumption is made about representability of the underlying Jordan algebra. As a special case, we prove polynomial iteration complexities for variants of the short-, semi-long-, and long-step path-following algorithms using the Nesterov-Todd, XS, or SX directions.
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页码:409 / 438
页数:29
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