SSGTA: A Novel Swap Sequence based Game Theory Algorithm for Traveling Salesman Problem

Abu Saleh Bin Shahadat, Safial Islam Ayon, M. R. Khatun
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引用次数: 1

Abstract

Many approaches have been developed to make intelligent moves imitating rational decision-makers. Game theory provides a theoretical framework that can be efficiently employed in solving complex optimization problems. The area of applied mathematics that investigates the strategic behavior of rational factors is known as game theory. In other terms, game theory is an analytical tool for making the optimal decision in interaction and decision-making situations. The Traveling Salesman Problem (TSP) is solved using this research’s swap sequence-based game theory algorithm (SSGTA). TSP is a well-known combinatorial optimization real problem. TSP is also widely used to assess expertise in newly emerging optimization techniques. Furthermore, optimization techniques established for other tasks (such as numerical optimization) are tested for TSP competency. A player attempts to update its solution using another player. An expected payoff mechanism is proposed to choose the learning strategy. Based on the improvement of solution quality, a payoff is awarded to the winning player. When no improvement is noticed in the solution, the 2-opt algorithm is employed to get over the local optimal. SSGTA is tested for several benchmark TSP instances from TSPLIB and compared with some other recent methods. SSGTA performs better than different algorithms on accuracy and stability.
SSGTA:一种新的基于交换序列的博弈算法求解旅行商问题
已经开发了许多方法来模仿理性的决策者做出明智的举动。博弈论提供了一个理论框架,可以有效地解决复杂的优化问题。研究理性因素的策略行为的应用数学领域被称为博弈论。换句话说,博弈论是在互动和决策情况下做出最佳决策的分析工具。本文采用基于交换序列的博弈论算法求解旅行商问题(TSP)。TSP是一个著名的组合优化问题。TSP也被广泛用于评估新兴优化技术的专业知识。此外,为其他任务(如数值优化)建立的优化技术进行了TSP能力测试。一个玩家试图使用另一个玩家更新其解决方案。提出了一种学习策略选择的预期收益机制。根据解决方案质量的提高,获胜的玩家将获得奖励。当解无改进时,采用2-opt算法克服局部最优。SSGTA在TSPLIB的几个基准TSP实例中进行了测试,并比较了其他一些最新方法。SSGTA在精度和稳定性上都优于其他算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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