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A hybrid machine-learning and optimization method to solve bi-level problems

机译:解决双层问题的混合机器学习和优化方法

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Bi-level optimization has widespread applications in many disciplines including management, economy, energy, and transportation. Because it is by nature a NP-hard problem, finding an efficient and reliable solution method tailored to large sized cases of specific types is of the highest importance. To this end, we develop a hybrid method based on machine-learning and optimization. For numerical tests, we set up a highly challenging case: a nonlinear discrete bi-level problem with equilibrium constraints in transportation science, known as the discrete network design problem. The hybrid method transforms the original problem to an integer linear programing problem based on a supervised learning technique and a tractable nonlinear problem. This methodology is tested using a real dataset in which the results are found to be highly promising. For the machine learning tasks we employ MATLAB and to solve the optimization problems, we use GAMS (with CPLEX solver). (C) 2017 Elsevier Ltd. All rights reserved.
机译:双层优化已在许多学科中广泛应用,包括管理,经济,能源和运输。由于它本质上是NP难题,因此找到一种针对大型特定类型案例的有效而可靠的解决方法至关重要。为此,我们开发了一种基于机器学习和优化的混合方法。对于数值测试,我们提出了一个具有挑战性的案例:运输科学中具有平衡约束的非线性离散双层问题,称为离散网络设计问题。混合方法基于监督学习技术和可处理的非线性问题,将原始问题转换为整数线性规划问题。使用实际数据集对这种方法进行了测试,发现结果非常有前途。对于机器学习任务,我们使用MATLAB,并且为了解决优化问题,我们使用GAMS(带有CPLEX求解器)。 (C)2017 Elsevier Ltd.保留所有权利。

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