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New Bundle Methods for Solving Lagrangian Relaxation Dual Problems

机译:解决拉格朗日松弛对偶问题的新捆绑方法

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Bundle methods have been used frequently to solve nonsmooth optimization problems. In these methods, subgradient directions from past iterations are accumulated in a bundle, and a trial direction is obtained by performing quadratic programming based on the information contained in the bundle. A line search is then performed along the trial direction, generating a serious step if the function value is improved by ∈ or a null step otherwise. Bundle methods have been used to maximize the nonsmooth dual function in Lagrangian relaxation for integer optimization problems, where the subgradients are obtained by minimizing the performance index of the relaxed problem. This paper improves bundle methods by making good use of near-minimum solutions that are obtained while solving the relaxed problem. The bundle information is thus enriched, leading to better search directions and less number of null steps. Furthermore, a simplified bundle method is developed, where a fuzzy rule is used to combine linearly directions from near-minimum solutions, replacing quadratic programming and line search. When the simplified bundle method is specialized to an important class of problems where the relaxed problem can be solved by using dynamic programming, fuzzy dynamic programming is developed to obtain efficiently near-optimal solutions and their weights for the linear combination. This method is then applied to job shop scheduling problems, leading to better performance than previously reported in the literature.
机译:捆绑方法经常用于解决非平滑优化问题。在这些方法中,将过去迭代的次梯度方向累积在一个束中,并根据束中包含的信息通过执行二次编程来获得试验方向。然后沿试验方向执行线搜索,如果函数值被ε改善,则生成严重步,否则生成空步。对于整数优化问题,已使用捆绑方法来最大化Lagrangian松弛中的非光滑对偶函数,其中通过最小化松弛问题的性能指标来获得次梯度。本文通过善用解决松弛问题时获得的近最小解来改进捆绑方法。捆绑信息因此得以丰富,从而导致更好的搜索方向和更少的空步数。此外,开发了一种简化的束方法,其中使用模糊规则来组合接近最小解的线性方向,从而取代二次规划和线搜索。当简化束方法专门用于一类重要问题时,可以通过使用动态规划来解决松弛问题,因此发展了模糊动态规划,以有效地获得线性组合的近似最优解及其权重。然后将该方法应用于作业车间调度问题,从而导致性能比文献中先前报告的更好。

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