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A Knowledge-Based Evolution Strategy for the Multi-Objective Minimum Spanning Tree Problem

机译:基于知识的进化策略,用于多目标最小生成树问题

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A fast Knowledge-based Evolution Strategy, KES, for the multi-objective minimum spanning tree, is presented. The proposed algorithm is validated, for the bi-objective case, with an exhaustive search for small problems (4-10 nodes), and compared with a deterministic algorithm, EPDA and NSGA-II for larger problems (up to 100 nodes) using benchmark hard instances. Experimental results show that KES finds the true Pareto fronts for small instances of the problem and calculates good approximation Pareto sets for larger instances tested. It is shown that the fronts calculated by KES are superior to NSGA-II fronts and almost as good as those established by EPDA. KES is designed to be scalable to multi-objective problems and fast due to its small complexity.
机译:提供了一种快速知识的演化策略,KES,用于多目标最小生成树。对于双目标案例,验证了所提出的算法,省略了穷举问题(4-10节点),并与使用基准测试的更大问题(最多100个节点)的确定性算法,EPDA和NSGA-II进行比较硬实例。实验结果表明,KES找到了对问题的小型实例的真正的帕累托前线,并计算测试的较大实例的良好近似帕累托集。结果表明,KES计算的前线优于NSGA-II前沿,并且几乎与由EPDA建立的人一样好。 KES旨在可扩展到多目标问题,并且由于其小复杂性而快速。

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