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Поиск атрибутный
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Primal-Dual Constraint Aggregation With Application to Stochastic Programming
Аннотация
The special constraint structure and large dimension are characteristic for multistage stochastic optimization. This results from modelling future uncertainty via branching process or scenario tree. Most efficient algorithms for solving this type of problems use certain decomposition schemes, and often only a part of the whole set of scenarios is taken into account in order to make the problem tractable. We propose a primal-dual method based on constraint aggregation, which constructs a sequence of iterates converging to a solution of the initial problem. At each iteration, however, only a reduced subproblem with smaller number of aggregate constraints has to be solved. Number of aggregates and their composition are determined by user, and the procedure for calculating aggregates can be parallelized. The method provides a posteriory estimates of the quality of the current solution approximation in terms of the objective function value and the residual. Results of numerical tests for a portfolio allocation problem with quadratic utility function are presented. Ключевые слова
Constraint aggregation, decomposition, multistage stochastic programming Полный текст
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