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首页> 外文期刊>Journal of ambient intelligence and humanized computing >An alternative approach to neural network training based on hybrid bio meta-heuristic algorithm
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An alternative approach to neural network training based on hybrid bio meta-heuristic algorithm

机译:基于混合生物元启发式算法的神经网络训练的另一种方法

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Metaheuristic algorithms are popular techniques used to solve several optimization problems. Among the key algorithms, cuckoo search (CS) is a comparatively novel and promising metaheuristic algorithm. Various researchers have shown that it performs better when compared to other metaheuristic algorithms while searching for optimal value and is being used to solve various real-world problems. However, the basic CS algorithm can be improved by enhancing the probabilities of survival of the eggs. It will decrease the possibility of the eggs getting ruined by the host bird. The cuckoo birds move to a new position looking for more search space to get better solutions. Furthermore, better search space can be obtained by executing levy flight with accelerated particle swarm optimization (APSO). This research proposes a new method known as hybrid accelerated cuckoo particle swarm optimization (HACPSO) algorithm, based on two metaheuristic algorithms. In the proposed HACPSO algorithm, APSO provides communication for looking better place having the best nest with greater survivability for cuckoo birds. Different simulation has been carried using standard dataset and efficiency of the proposed algorithm is compared with CS, artificial bee colony and other similar hybrid variants. The simulation results demonstrate that the HACPSO algorithm performs better as compared to other algorithms in term of accuracy, MSE, SD, and with fast convergence rate to the target space.
机译:元启发式算法是用于解决一些优化问题的流行技术。在关键算法中,布谷鸟搜索(CS)是一种比较新颖且很有前途的元启发式算法。各种研究人员表明,在寻找最佳值的同时,与其他元启发式算法相比,它的性能更好,可用于解决各种现实问题。然而,可以通过提高卵的存活概率来改进基本的CS算法。这将减少卵被寄主鸟破坏的可能性。杜鹃鸟移到新的位置,寻找更多的搜索空间以获得更好的解决方案。此外,通过使用加速粒子群优化(APSO)执行征税飞行,可以获得更好的搜索空间。这项研究基于两种元启发式算法,提出了一种称为混合加速杜鹃粒子群优化(HACPSO)算法的新方法。在提出的HACPSO算法中,APSO提供了通信,以使杜鹃鸟看起来更好,巢穴更好,生存力更强。使用标准数据集进行了不同的模拟,并将该算法的效率与CS,人工蜂群和其他类似的杂交变种进行了比较。仿真结果表明,与其他算法相比,HACPSO算法在准确性,MSE,SD以及对目标空间的快速收敛性方面均优于其他算法。

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