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On a Homogeneous Algorithm for the Monotone Complementarity Problem
 Mathematical Programming
, 1995
"... We present a generalization of a homogeneous selfdual linear programming (LP) algorithm to solving the monotone complementarity problem (MCP). The algorithm does not need to use any "bigM" parameter or twophase method, and it generates either a solution converging towards feasibility an ..."
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Cited by 40 (3 self)
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We present a generalization of a homogeneous selfdual linear programming (LP) algorithm to solving the monotone complementarity problem (MCP). The algorithm does not need to use any "bigM" parameter or twophase method, and it generates either a solution converging towards feasibility and complementarity simultaneously or a certificate proving infeasibility. Moreover, if the MCP is polynomially solvable with an interior feasible starting point, then it can be polynomially solved without using or knowing such information at all. To our knowledge, this is the first interiorpoint and infeasiblestarting algorithm for solving the MCP that possesses these desired features. Preliminary computational results are presented. Key words: Monotone complementarity problem, homogeneous and selfdual, infeasiblestarting algorithm. Running head: A homogeneous algorithm for MCP. Department of Management, Odense University, Campusvej 55, DK5230 Odense M, Denmark, email: eda@busieco.ou.dk. y De...
An Interior Point Potential Reduction Method for Constrained Equations
, 1995
"... We study the problem of solving a constrained system of nonlinear equations by a combination of the classical damped Newton method for (unconstrained) smooth equations and the recent interior point potential reduction methods for linear programs, linear and nonlinear complementarity problems. In gen ..."
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Cited by 12 (3 self)
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We study the problem of solving a constrained system of nonlinear equations by a combination of the classical damped Newton method for (unconstrained) smooth equations and the recent interior point potential reduction methods for linear programs, linear and nonlinear complementarity problems. In general, constrained equations provide a unified formulation for many mathematical programming problems, including complementarity problems of various kinds and the KarushKuhnTucker systems of variational inequalities and nonlinear programs. Combining ideas from the damped Newton and interior point methods, we present an iterative algorithm for solving a constrained system of equations and investigate its convergence properties. Specialization of the algorithm and its convergence analysis to complementarity problems of various kinds and the KarushKuhnTucker systems of variational inequalities are discussed in detail. We also report the computational results of the implementation of the algo...
Solving the continuous nonlinear resource allocation problem with an interior point method. arXiv preprint arXiv:1305.1284
, 2013
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RICE UNIVERSITY The Use of Optimization Techniques in the Solution of Partial Differential Equations from
, 1996
"... Acknowledgments This thesis is a very important milestone in a journey I began more than ten years ago. People too numerous to mention have helped me along the way; a few are singled out here. When I was an undergraduate at the University of Maryland, Baltimore County, the Mathematics faculty, in pa ..."
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Acknowledgments This thesis is a very important milestone in a journey I began more than ten years ago. People too numerous to mention have helped me along the way; a few are singled out here. When I was an undergraduate at the University of Maryland, Baltimore County, the Mathematics faculty, in particular Professors James Greenberg, So/ren Jensen, and Marc Teboulle, taught me to love applied mathematics; their patience with me was endless and I will always be grateful to them.
Superlinear primaldual affine scaling algorithms for LCP
, 1993
"... We describe an interiorpoint algorithm for monotone linear complementarity problems in which primaldual affine scaling is used to generate the search directions. The algorithm is shown to have global and superlinear convergence with Qorder up to (but not including) two. The technique is shown to ..."
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We describe an interiorpoint algorithm for monotone linear complementarity problems in which primaldual affine scaling is used to generate the search directions. The algorithm is shown to have global and superlinear convergence with Qorder up to (but not including) two. The technique is shown to be consistent with a potentialreduction algorithm, yielding the first potentialreduction algorithm that is both globally and superlinearly convergent.