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On some interior-point algorithms for nonconvex quadratic optimization
Authors:Paul Tseng  Yinyu Ye
Affiliation:(1) Department of Mathematics, University of Washington, Seattle, Washington 98195, USA, e-mail: tseng@math.washington.edu, US;(2) Department of Management Science, University of Iowa, Iowa City, Iowa 52242, USA, e-mail: yinyu-ye@uiowa.edu, US
Abstract:
 Recently, interior-point algorithms have been applied to nonlinear and nonconvex optimization. Most of these algorithms are either primal-dual path-following or affine-scaling in nature, and some of them are conjectured to converge to a local minimum. We give several examples to show that this may be untrue and we suggest some strategies for overcoming this difficulty. Received: June 26, 2000 / Accepted: April 2002 Published online: September 5, 2002 Key words. Nonconvex quadratic optimization – local minimum – interior-point algorithms – trust region – branch-and-cut This research is supported by the National Science Foundation Grant CCR-9731273 and DMS-9703490.
Keywords:
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