A path following algorithm for a class of convex programming problems |
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Authors: | J. Zhu |
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Affiliation: | (1) Department of Management Sciences, College of Business Administration, The University of Iowa, 52242 Iowa City, IA, USA |
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Abstract: | We present a primal-dual path following interior algorithm for a class of linearly constrained convex programming problems with non-negative decision variables. We introduce the definition of a Scaled Lipschitz Condition and show that if the objective function satisfies the Scaled Lipschitz Condition then, at each iteration, our algorithm reduces the duality gap by at least a factor of (1– / n), where is positive and depends on the curvature of the objective function, by means of solving a system of linear equations which requires no more than O(n3) arithmetic operations. The class of functions having the Scaled Lipschitz Condition includes linear, convex quadratic and entropy functions. |
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Keywords: | Convex Programming Primal-dual Methods Path Following Interior Point Algorithm Entropy Optimization |
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