CVaR-constrained stochastic programming reformulation for stochastic nonlinear complementarity problems
We reformulate a stochastic nonlinear complementarity problem as a stochastic programming problem which minimizes an expected residual defined by a restricted NCP function with nonnegative constraints and CVaR constraints which guarantee the stochastic nonlinear function being nonnegative with a high probability. By applying smoothing technique and penalty method, we propose a penalized smoothing sample average approximation algorithm to solve the CVaR-constrained stochastic programming. We show that the optimal solution of the penalized smoothing sample average approximation problem converges to the solution of the corresponding nonsmooth CVaR-constrained stochastic programming problem almost surely. Finally, we report some preliminary numerical test results. Copyright Springer Science+Business Media New York 2014
Year of publication: |
2014
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Authors: | Xu, Liyan ; Yu, Bo |
Published in: |
Computational Optimization and Applications. - Springer. - Vol. 58.2014, 2, p. 483-501
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Publisher: |
Springer |
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