Generalized Newton method for linear optimization problems with inequality constraints

被引:0
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作者
A. I. Golikov
Yu. G. Evtushenko
机构
[1] Russian Academy of Sciences,Dorodnitsyn Computing Centre
关键词
linear programming problem; piecewise quadratic function; unconstrained maximization; generalized Newton method;
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摘要
A dual problem of linear programming is reduced to the unconstrained maximization of a concave piecewise quadratic function for sufficiently large values of a certain parameter. An estimate is given for the threshold value of the parameter starting from which the projection of a given point to the set of solutions of the dual linear programming problem in dual and auxiliary variables is easily found by means of a single solution of the unconstrained maximization problem. The unconstrained maximization is carried out by the generalized Newton method, which is globally convergent in an a finite number of steps. The results of numerical experiments are presented for randomly generated large-scale linear programming problems.
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页码:96 / 107
页数:11
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