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A Methodology to Determine the Subset of Heuristics for Hyperheuristics through Metalearning for Solving Graph Coloring and Capacitated Vehicle Routing Problems

机译:一种方法,以通过冶金系统确定高管学习的启发式血管菌子集,以解决图形着色和电容车辆路由问题

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In this work, we focus on the problem of selecting low-level heuristics in a hyperheuristic approach with offline learning, for the solution of instances of different problem domains. The objective is to improve the performance of the offline hyperheuristic approach, identifying equivalence classes in a set of instances of different problems and selecting the best performing heuristics in each of them. A methodology is proposed as the first step of a set of instances of all problems, and the generic characteristics of each instance and the performance of the heuristics in each one of them are considered to define the vectors of characteristics and make a grouping of classes. Metalearning with statistical tests is used to select the heuristics for each class. Finally, we used the Naive Bayes to test the set instances with k-fold cross-validation, and we compared all results statistically with the best-known values. In this research, the methodology was tested by applying it to the problems of capacitated vehicle routing (CVRP) and graph coloring (GCP). The experimental results show that the proposed methodology can improve the performance of the offline hyperheuristic approach, correctly identifying the classes of instances and applying the appropriate heuristics in each case. This is based on the statistical comparison of the results obtained with those of the state of the art of each instance.
机译:在这项工作中,我们注重与脱机学习hyperheuristic方法选择低级别的启发,针对不同的问题域的情况下的解决方案的问题。的目的是改善脱机hyperheuristic方法的性能,识别等价类中的一组不同的问题的实例和在它们中的每选择最佳执行试探法。一个方法是提出一组的所有问题实例的第一步,每个实例的一般特征和他们每个人启发的表现被认为是定义特性的载体,使的一组类。有统计检验元学习来选择每个类的试探。最后,我们使用朴素贝叶斯具有k倍交叉验证来测试组的情况下,和我们比较统计学上与最知名的值的所有结果。在本研究中,该方法是通过将其应用到车辆路径(CVRP)和图着色(GCP)的问题进行测试。实验结果表明,所提出的方法可以提高离线hyperheuristic方法的性能,正确识别的实例的类和在每一种情况下应用适当的试探法。这是基于与那些本领域的每个实例的状态所获得的结果的统计学比较。

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