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A modified reduced gradient method for a class of nondifferentiable problems

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Abstract

The class of nondifferentiable problems treated in this paper constitutes the dual of a class of convex differentiable problems. The primal problem involves faithfully convex functions of linear mappings of the independent variables in the objective function and in the constraints. The points of the dual problem where the objective function is nondifferentiable are known: the method presented here takes advantage of this fact to propose modifications necessary in the reduced gradient method to guarantee convergence.

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Gochet, W., Smeers, Y. A modified reduced gradient method for a class of nondifferentiable problems. Mathematical Programming 19, 137–154 (1980). https://doi.org/10.1007/BF01581637

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  • DOI: https://doi.org/10.1007/BF01581637

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