Logarithmic sequential unconstrained minimization technique limits in convex programming

Logarithmic sequential unconstrained minimization technique limits in convex programming

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Article ID: iaor2002936
Country: Germany
Volume: 90
Issue: 1
Start Page Number: 113
End Page Number: 145
Publication Date: Jan 2001
Journal: Mathematical Programming
Authors: ,
Abstract:

The limits of a class of primal and dual solution trajectories associated with the Sequential Unconstrained Minimization Technique are investigated for convex programming problems with non-unique optima. Logarithmic barrier terms are assumed. For linear programming problems, such limits – of both primal and dual trajectories – are strongly optimal, strictly complementary, and can be characterized as analytic centers of, loosely speaking, optimality regions. Examples are given, which show that those results do not hold in general for convex programming problems. If the latter are weakly analytic, primal trajectory limits can be characterized in analogy to the linear programming case and without assuming differentiability. That class of programming problems contains faithfully convex, linear, and convex quadratic programming problems as strict subsets. In the differential case, dual trajectory limits can be characterized similarly, albeit under different conditions, one of which suffices for strict complementarity.

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