模因编程与自适应局部搜索使用树数据结构

Emad Hamdy, A. Hedar, M. Fukushima
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引用次数: 11

摘要

元启发式是用于解决组合优化问题的启发式方法的一般框架,由于一些限制,如非常大的运行时间,探索这些问题的精确解变得非常困难。本文定义了树空间上新的局部搜索。使用这些局部搜索,各种元启发式可以被推广到处理树状数据结构,从而引入一个更通用的元启发式框架,称为元启发式编程(MHP),作为通用的机器学习工具。模因规划(Memetic Programming, MP)算法作为遗传规划(Genetic Programming, GP)算法的替代方案,是MHP框架下的一个新成果。通过数值对比实验验证了该算法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Memetic programming with adaptive local search using tree data structures
Meta-heuristics are general frameworks of heuristics methods for solving combinatorial optimization problems, where exploring the exact solutions for these problems becomes very hard due to some limitations like extremely large running time. In this paper, new local searches over tree space are defined. Using these local searches, various meta-heuristics can be generalized to deal with tree data structures to introduce a more general framework of meta-heuristics called Meta-Heuristics Programming (MHP) as general machine learning tools. As an alternative to Genetic Programming (GP) algorithm, Memetic Programming (MP) algorithm is proposed as a new outcome of the MHP framework. The efficiency of the proposed MP Algorithm is examined through comparative numerical experiments.
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