The ML-Constructive heuristic is a recently presented method and the first hybrid method capable of scaling up to real scale traveling salesman problems. It combines machine learning techniques and classic optimization techniques. In this paper we present improvements to the computational weight of the original deep learning model. In addition, as simpler models reduce the execution time, the possibility of adding a local-search phase is explored to further improve performance. Experimental results corroborate the quality of the proposed improvements.
翻译:ML -- -- 建设性超速是最近推出的一种方法和第一种混合方法,能够将旅行推销员问题提升到真正的规模,它结合了机器学习技术和经典优化技术,在本文中我们介绍了原始深层学习模式的计算权重的改进,此外,随着更简单的模型缩短执行时间,还探索了增加本地搜索阶段的可能性,以进一步提高业绩,实验结果证实了拟议改进的质量。