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ACO with semi-random start applied on MKP

机译:ACO与半随机开始施加在种子上

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Ant Colony Optimization (ACO) is a stochastic search method that mimics the social behavior of real ants colonies, which manage to establish the shortest route to feeding sources and back. Such algorithms have been developed to arrive at near-optimal solutions to large-scale optimization problems, for which traditional mathematical techniques may fail. On this paper semi-random start is applied. A new kind of estimation of start nodes of the ants is made and several start strategies are prepared and combined. The idea of semi-random start is better management of the ants. This new technique is tested on Multiple Knapsack Problem (MKP). Benchmark comparison among the strategies is presented in terms of quality of the results. Based on this comparison analysis, the performance of the algorithm is discussed. The study presents ideas that should be beneficial to both practitioners and researchers involved in solving optimization problems.
机译:蚁群优化(ACO)是一种随机搜索方法,用于模仿真实蚂蚁殖民地的社会行为,该方法设法建立了喂养来源和背部的最短路线。已经开发了这种算法以达到近乎最佳的大规模优化问题的解决方案,传统的数学技术可能失败。在本文中,应用了半随机启动。制作了新的开始节点的新型估计,并准备了几个开始策略并组合。半随机启动的想法更好地管理蚂蚁。在多个背包问题(MKP)上测试了这种新技术。策略之间的基准比较是在结果的质量方面提出的。基于该比较分析,讨论了算法的性能。该研究提出了对参与优化问题的从业者和研究人员应该有利于思考。

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