使用机器学习和数据融合技术解决困难组合优化问题的新方法

M. Zennaki, A. Ech-cherif
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引用次数: 3

摘要

我们研究了使用核聚类和数据融合技术解决硬组合优化问题的可能性。提出的通用范式旨在将无监督核方法与基于种群的启发式算法相结合,从而从搜索历史中学习解簇。这种形式的提取知识引导启发式自动检测解决方案的有希望的区域。在此基础上提出的算法是对经典散点搜索算法的扩展,可以在搜索过程中利用找到的解的历史进行自动学习。初步结果表明,该方法对车辆路径问题(VRP)具有极大的应用价值,能够有效地找到大型问题实例的近最优解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A New Approach using Machine Learning and Data Fusion Techniques for Solving Hard Combinatorial Optimization Problems
We investigate the possibility of using kernel clustering and data fusion techniques for solving hard combinatorial optimization problems. The proposed general paradigm aims at incorporating unsupervised kernel methods into population-based heuristics, which rely on spatial fusion of solutions, in order to learn the solution clusters from the search history. This form of extracted knowledge guides the heuristic to detect automatically promising regions of solutions. The proposed algorithm derived from this paradigm is an extension of the classical scatter search and can automatically learn during the search process by exploiting the history of solutions found. Preliminary results, with an application to the well-known vehicle routing problem (VRP) show the great interest of such paradigm and can effectively find near-optimal solutions for large problem instances.
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