Benders Cut Classification via Support Vector Machines for Solving Two-Stage Stochastic Programs

Huiwen Jia, Siqian Shen
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引用次数: 14

Abstract

We consider Benders decomposition for solving two-stage stochastic programs with complete recourse based on finite samples of the uncertain parameters. We define the Benders cuts binding at the final optimal solution or the ones significantly improving bounds over iterations as valuable cuts. We propose a learning-enhanced Benders decomposition (LearnBD) algorithm, which adds a cut classification step in each iteration to selectively generate cuts that are more likely to be valuable cuts. The LearnBD algorithm includes two phases: (i) sampling cuts and collecting information from training problems and (ii) solving testing problems with a support vector machine (SVM) cut classifier. We run the LearnBD algorithm on instances of capacitated facility location and multicommodity network design under uncertain demand. Our results show that SVM cut classifier works effectively for identifying valuable cuts, and the LearnBD algorithm reduces the total solving time of all instances for different problems with various sizes and complexities.
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用支持向量机求解两阶段随机规划的Benders割分类
基于不确定参数的有限样本,我们考虑求解具有完全追索权的两阶段随机规划的Benders分解。我们将在最终最优解处绑定的Benders割或在迭代中显著改进边界的割定义为有价值的割。我们提出了一种学习增强的Benders分解(LearnBD)算法,该算法在每次迭代中添加了一个切割分类步骤,以选择性地生成更有可能是有价值切割的切割。LearnBD算法包括两个阶段:(i)对切割进行采样并从训练问题中收集信息;(ii)使用支持向量机(SVM)切割分类器解决测试问题。我们在有容量的设施位置和不确定需求下的多用户网络设计的实例上运行LearnBD算法。我们的结果表明,SVM切割分类器可以有效地识别有价值的切割,并且对于不同大小和复杂度的不同问题,LearnBD算法减少了所有实例的总求解时间。
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