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Reinforcement Learning for Variable Selection in a Branch and Bound Algorithm

机译:分支算法中变量选择的加固学习

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摘要

Mixed integer linear programs are commonly solved by Branch and Bound algorithms. A key factor of the efficiency of the most successful commercial solvers is their fine-tuned heuristics. In this paper, we leverage patterns in real-world instances to learn from scratch a new branching strategy optimised for a given problem and compare it with a commercial solver. We propose FMSTS, a novel Reinforcement Learning approach specifically designed for this task. The strength of our method lies in the consistency between a local value function and a global metric of interest. In addition, we provide insights for adapting known RL techniques to the Branch and Bound setting, and present a new neural network architecture inspired from the literature. To our knowledge, it is the first time Reinforcement Learning has been used to fully optimise the branching strategy. Computational experiments show that our method is appropriate and able to generalise well to new instances.
机译:混合整数线性程序通常由分支和绑定算法解决。最成功的商业求解器效率的关键因素是他们的微调启发式。在本文中,我们利用现实世界实例中的模式来学习从划痕进行了针对给定问题优化的新分支策略,并将其与商业求解器进行比较。我们提出FMSTS,一种专门为此任务设计的新型加固学习方法。我们的方法的强度在于局部价值函数与感兴趣的全球度量之间的一致性。此外,我们提供了对分支机构和绑定设置将已知的RL技术调整的见解,并提出了一种从文献中启发的新神经网络架构。为我们的知识,它是第一次加强学习已被用来充分优化分支策略。计算实验表明,我们的方法是合适的,能够概括为新的实例。

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