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A New Precedence-Based Ant Colony Optimization for Permutation Problems

机译:基于新的基于优先级的蚂蚁殖民地优化,用于排列问题

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In this paper we introduce ACOP, a novel ACO algorithm for solving permutation based optimization problems. The main novelty is in how ACOP ants construct a permutation by navigating the space of partial orders and considering precedence relations as solution components. Indeed, a permutation is built up by iteratively adding precedence relations to a partial order of items until it becomes a total order, thus the corresponding permutation is obtained. The pheromone model and the heuristic function assign desirability values to precedence relations. An ACOP implementation for the Linear Ordering Problem (LOP) is proposed. Experiments have been held on a large set of widely adopted LOP benchmark instances. The experimental results show that the approach is very competitive and it clearly outperforms previous ACO proposals for LOP.
机译:在本文中,我们介绍了一种用于解决基于透置的优化问题的新型ACO算法。主要的新颖性是Acop Ants如何通过导航部分订单的空间来构造置换,并将优先关系视为解决方案组件。实际上,通过迭代地将优先关系与项目的部分顺序添加到总顺序来构建置换,直到它成为总顺序,因此获得了相应的置换。信息素模型和启发式函数为优先关系分配了期望值。提出了线性排序问题(LOP)的ACOP实现。在一大集的广泛采用的循环基准实例上举行了实验。实验结果表明,该方法是非常有竞争力的,它显然优于以前的循环的ACO建议。

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