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Improvement of Imperialist Competitive Algorithm based on the Cosine Similarity Criterion of Neighboring Objects

机译:基于邻近物体余弦相似标准的帝国主义竞争算法改进

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摘要

The goal of optimizing the best acceptable answer is according to the limitations and needs of the problem. For a problem, there are several different answers that are defined to compare them and select an optimal answer; a function is called a target function. The choice of this function depends on the nature of the problem. Sometimes several goals are together optimized; such optimization problems are called multi-objective issues. One way to deal with such problems is to form a new objective function in the form of a linear combination of the main objective functions. In the proposed approach, in order to increase the ability to discover new position in the Imperialist Competitive Algorithm (ICA), its operators are combined with the particle swarm optimization. The colonial competition optimization algorithm has the ability to search global and has a fast convergence rate, and the particle swarm algorithm added to it increases the accuracy of searches. In this approach, the cosine similarity of the neighboring countries is measured by the nearest colonies of an imperialist and closest competitor country. In the proposed method, by balancing the global and local search, a method for improving the performance of the two algorithms is presented. The simulation results of the combined algorithm have been evaluated with some of the benchmark functions. Comparison of the results has been evaluated with respect to metaheuristic algorithms such as Differential Evolution (DE), Ant Lion Optimizer (ALO), ICA, Particle Swarm Optimization (PSO), and Genetic Algorithm (GA).
机译:优化最好的可接受答案的目标是根据问题的局限性和需求。对于问题,有几个不同的答案被定义为比较它们并选择最佳答案;函数称为目标函数。此功能的选择取决于问题的性质。有时若干目标在一起优化;这种优化问题称为多目标问题。处理此类问题的一种方法是以主要目标函数的线性组合的形式形成新的目标函数。在提出的方法中,为了增加在帝国主义竞争算法(ICA)中发现新职位的能力,其运营商与粒子群优化相结合。殖民竞争优化算法能够搜索全局并具有快速收敛速度,并且添加到它的粒子群算法增加了搜索的准确性。在这种方法中,邻国的余弦相似性由帝国主义和最近的竞争对手国家的最近殖民地衡量。在所提出的方法中,通过平衡全局和本地搜索,提出了一种提高两个算法的性能的方法。组合算法的仿真结果已被一些基准函数进行评估。已经相对于差分演进(DE),蚂蚁狮子优化器(ALO),ICA,粒子群优化(PSO)和遗传算法(GA)进行了结果对结果进行了评估了结果的比较。

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