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Approximate methods for convex minimization problems with series–parallel structure
Authors:Adi Ben-Israel  Genrikh Levin  Yuri Levin  Boris Rozin
Institution:1. RUTCOR – Rutgers Center for Operations Research, Rutgers University, 640 Bartholomew Road, Piscataway, NJ 08854-8003, USA;2. Operations Research Laboratory, United Institute of Informatics Problems, National Academy of Science of Belarus, Minsk, Belarus;3. School of Business, Queen’s University, Kingston, Ontario, Canada K7L 3N6
Abstract:Consider a problem of minimizing a separable, strictly convex, monotone and differentiable function on a convex polyhedron generated by a system of m linear inequalities. The problem has a series–parallel structure, with the variables divided serially into n disjoint subsets, whose elements are considered in parallel. This special structure is exploited in two algorithms proposed here for the approximate solution of the problem. The first algorithm solves at most min{mν − n + 1} subproblems; each subproblem has exactly one equality constraint and at most n variables. The second algorithm solves a dynamically generated sequence of subproblems; each subproblem has at most ν − n + 1 equality constraints, where ν is the total number of variables. To solve these subproblems both algorithms use the authors’ Projected Newton Bracketing method for linearly constrained convex minimization, in conjunction with the steepest descent method. We report the results of numerical experiments for both algorithms.
Keywords:Convex programming  Decomposition  Large-scale optimization
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