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Statistical Analysis of Various Hybridization of Evolutionary Algorithm for Traveling Salesman Problem

机译:旅行商问题的进化算法的各种混合统计分析

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The paper focus on statistical analysis of separate, combined and partial hybridization performance of evolutionary algorithm and neighborhood searcher with a goal to find an intelligent way of hybridization of evolutionary algorithms. On the Traveling Salesman Problem (TSP) we measured the influence of hybridization a 2-opt heuristic-based local searcher into the evolutionary algorithm. Evolutionary Algorithm gives a diversification, while 2-opt improves intensification. The TSP is nowadays already solved for small instances rather efficiently by exact algorithms (e.g concorde) and by local search heuristics as LKH by Helsgaun. Nevertheless, the paper shows statistical analysis that intelligently hybridized algorithm combines good qualities from the both applied components and outperforms each individual method and suggest what level and type of hybridization is best for a given problem to make them intelligent. In tests we applied hybridization at various percentages (level) of evolutionary algorithm iterations. The main contribution of the paper is to show statistical analysis of hybridized evolutionary algorithms. For that purpose we used well known statistical tools. Since the evaluation scores were not normally distributed, the nonparametric Kruskal-Wallis Test (KWT) was used instead of the standard one-way ANOVA. The differences were considered to be statistically significant in cases where the estimated p-values of statistical tests were less than or equal to 0.05. The analysis with KWT showed that there exist statistically significant differences in place of hybridization. The analysis revealed significant differences in all levels of the hybridization. However, intensifying the level of hybridization further increased the p-value of the KWT, which means that the place of hybridization becomes of a less importance when the level of hybridization increases.
机译:本文着重于对进化算法和邻域搜索器的单独,组合和部分杂交性能进行统计分析,以期找到一种智能的进化算法混合方式。在旅行商问题(TSP)上,我们测量了将2启发式基于本地搜索器混合到进化算法中的影响。进化算法可实现多样化,而2-opt可提高强度。如今,TSP已通过精确算法(例如协和算法)和本地搜索启发式方法(如Helsgaun的LKH)相当有效地解决了小实例。然而,本文显示了统计分析,即智能杂交算法结合了两个应用组件的优良品质,并且优于每种方法,并提出了哪种杂交水平和类型最适合给定问题以使其智能化。在测试中,我们在进化算法迭代的各个百分比(级别)上应用了杂交。本文的主要贡献是展示了混合进化算法的统计分析。为此,我们使用了众所周知的统计工具。由于评估分数不是正态分布的,因此使用非参数Kruskal-Wallis检验(KWT)代替标准的单向ANOVA。在统计检验的估计p值小于或等于0.05的情况下,差异被认为具有统计学意义。用KWT进行的分析表明,在杂交位置上存在统计学上的显着差异。分析显示在所有杂交水平上都有显着差异。然而,增强杂交水平进一步增加了KWT的p值,这意味着当杂交水平增加时,杂交位置的重要性降低。

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