On implementing a primal-dual interior-point method for conic quadratic optimization

被引:1
|
作者
E.D. Andersen
C. Roos
T. Terlaky
机构
[1] MOSEK APS,
[2] Fruebjergvej 3 Box 16,undefined
[3] 2100 Copenhagen O,undefined
[4] Denmark,undefined
[5] e-mail: e.d. andersen@mosek.com,undefined
[6] TU Delft,undefined
[7] Mekelweg 4,undefined
[8] 2628 CD Delft,undefined
[9] The Netherlands,undefined
[10] e-mail: c.roos@its.tudelft.nl,undefined
[11] McMaster University,undefined
[12] Department of Computing and Software,undefined
[13] Hamilton,undefined
[14] Ontario,undefined
[15] Canada,undefined
[16] L8S 4L7. e-mail: terlaky@mcmaster.ca,undefined
来源
Mathematical Programming | 2003年 / 95卷
关键词
Computational Result; Linear Algebra; Computational Efficiency; Large Problem; Fixed Variable;
D O I
暂无
中图分类号
学科分类号
摘要
 Based on the work of the Nesterov and Todd on self-scaled cones an implementation of a primal-dual interior-point method for solving large-scale sparse conic quadratic optimization problems is presented. The main features of the implementation are it is based on a homogeneous and self-dual model, it handles rotated quadratic cones directly, it employs a Mehrotra type predictor-corrector extension and sparse linear algebra to improve the computational efficiency. Finally, the implementation exploits fixed variables which naturally occurs in many conic quadratic optimization problems. This is a novel feature for our implementation. Computational results are also presented to document that the implementation can solve very large problems robustly and efficiently.
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页码:249 / 277
页数:28
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