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Efficiently Solving Repeated Integer Linear Programming Problems by Learning Solutions of Similar Linear Programming Problems using Boosting Trees

机译:利用Boosting树学习相似线性规划问题解有效地求解重复整数线性规划问题

摘要

It is challenging to obtain online solutions of large-scale integer linear programming (ILP) problems that occur frequently in slightly different forms during planning for autonomous systems. We refer to such ILP problems as repeated ILP problems. The branch-and-bound (BAB) algorithm is commonly used to solve ILP problems, and a significant amount of computation time is expended in solving numerous relaxed linear programming (LP) problems at the nodes of the BAB trees. We observe that the relaxed LP problems, both within a particular BAB tree and across multiple trees for repeated ILP problems, are similar to each other in the sense that they contain almost the same number of constraints, similar objective function and constraint coefficients, and an identical number of decision variables. We present a boosting tree-based regression technique for learning a set of functions that map the objective function and the constraints to the decision variables of such a system of similar LP problems; this enables us to efficiently infer approximately optimal solutions of the repeated ILP problems. We provide theoretical performance guarantees on the predicted values and demonstrate the effectiveness of the algorithm in four representative domains involving a library of benchmark ILP problems, aircraft carrier deck scheduling, vehicle routing, and vehicle control.
机译:获得大规模整数线性规划(ILP)问题的在线解决方案具有挑战性,该问题通常在自治系统规划期间以略有不同的形式发生。我们将此类ILP问题称为重复ILP问题。分支定界(BAB)算法通常用于解决ILP问题,并且在解决BAB树的节点处的许多松弛线性规划(LP)问题上花费了大量的计算时间。我们观察到,在特定BAB树内以及针对重复ILP问题的多棵树之间的宽松LP问题彼此相似,因为它们包含几乎相同数量的约束,相似的目标函数和约束系数以及相同数量的决策变量。我们提出了一种基于增强树的回归技术,用于学习将目标函数和约束映射到类似LP问题的系统的决策变量的一组函数;这使我们能够有效地推断出重复ILP问题的近似最优解。我们提供了预测值的理论性能保证,并在涉及基准ILP问题库,航空母舰甲板调度,车辆路线和车辆控制的四个代表性领域中证明了该算法的有效性。

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