比较了分支定界混合算法与进化算法在TSP上的局部搜索及其混合算法

Yan Jiang, T. Weise, Jörg Lässig, R. Chiong, R. Athauda
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引用次数: 14

摘要

基准测试是研究元启发式优化算法性能的最重要方法之一。然而,文献中的大多数实验算法评估仅限于比较最终结果的简单统计。此外,来自不同“家族”的算法之间的比较很少。在这项研究中,我们使用TSP套件-一个开源软件框架-来研究分支定界(BB)算法在旅行推销员问题(TSP)中的性能。我们将这种BB算法与进化算法(EA)、蚁群优化(ACO)方法以及三种不同的局部搜索(LS)算法进行了比较。我们的比较是基于在整个优化过程中计算的各种不同的性能度量和统计数据。实验结果表明,BB算法在非常小的TSP实例上表现良好,但对于任何中型到大规模的问题实例都不是一个好的选择。随后,我们研究BB与LS杂交是否会产生与EA和ACO杂交版本相似的阳性结果。事实证明这是真的——“模因”BB算法能够显著提高纯BB算法的性能。值得指出的是,虽然本文的结果与先前文献的发现一致,但我们的结果是通过更全面和可靠的实验程序获得的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparing a hybrid branch and bound algorithm with evolutionary computation methods, local search and their hybrids on the TSP
Benchmarking is one of the most important ways to investigate the performance of metaheuristic optimization algorithms. Yet, most experimental algorithm evaluations in the literature limit themselves to simple statistics for comparing end results. Furthermore, comparisons between algorithms from different “families” are rare. In this study, we use the TSP Suite - an open source software framework - to investigate the performance of the Branch and Bound (BB) algorithm for the Traveling Salesman Problem (TSP). We compare this BB algorithm to an Evolutionary Algorithm (EA), an Ant Colony Optimization (ACO) approach, as well as three different Local Search (LS) algorithms. Our comparisons are based on a variety of different performance measures and statistics computed over the entire optimization process. The experimental results show that the BB algorithm performs well on very small TSP instances, but is not a good choice for any medium to large-scale problem instances. Subsequently, we investigate whether hybridizing BB with LS would give rise to similar positive results like the hybrid versions of EA and ACO have. This turns out to be true - the “Memetic” BB algorithms are able to improve the performance of pure BB algorithms significantly. It is worth pointing out that, while the results presented in this paper are consistent with previous findings in the literature, our results have been obtained through a much more comprehensive and solid experimental procedure.
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