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首页> 外文期刊>Applied Intelligence: The International Journal of Artificial Intelligence, Neural Networks, and Complex Problem-Solving Technologies >Improved monarch butterfly optimization for unconstrained global search and neural network training
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Improved monarch butterfly optimization for unconstrained global search and neural network training

机译:改善了帝王蝶形优化,对无限制的全球搜索和神经网络培训

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摘要

This work is a seminal attempt to address the drawbacks of the recently proposed monarch butterfly optimization (MBO) algorithm. This algorithm suffers from premature convergence, which makes it less suitable for solving real-world problems. The position updating of MBO is modified to involve previous solutions in addition to the best solution obtained thus far. To prove the efficiency of the Improved MBO (IMBO), a set of 23 well-known test functions is employed. The statistical results show that IMBO benefits from high local optima avoidance and fast convergence speed which helps this algorithm to outperform basic MBO and another recent variant of this algorithm called greedy strategy and self-adaptive crossover operator MBO (GCMBO). The results of the proposed algorithm are compared with nine other approaches in the literature for verification. The comparative analysis shows that IMBO provides very competitive results and tends to outperform current algorithms. To demonstrate the applicability of IMBO at solving challenging practical problems, it is also employed to train neural networks as well. The IMBO-based trainer is tested on 15 popular classification datasets obtained from the University of California at Irvine (UCI) Machine Learning Repository. The results are compared to a variety of techniques in the literature including the original MBO and GCMBO. It is observed that IMBO improves the learning of neural networks significantly, proving the merits of this algorithm for solving challenging problems.
机译:这项工作是解决最近提出的君主蝶优化(MBO)算法的缺点的开创性尝试。该算法遭受过早收敛,这使得不太适合解决真实问题。除了从迄今获得的最佳解决方案之外,修改MBO的位置更新以涉及先前的解决方案。为了证明改进的MBO(IMBO)的效率,采用了一组众所周知的测试功能。统计结果表明,IMBO受益于高地的最佳避免和快速收敛速度,这有助于该算法优于卓越的基本MBO和该算法的另一个称为贪婪策略和自适应交叉运算符MBO(GCMBO)的最近变体。该算法的结果与文献中的九种方法进行了比较,以进行验证。比较分析表明,IMBO提供了非常竞争力的结果,往往倾向于最佳的当前算法。为了展示IMBO在解决挑战实际问题方面的适用性,它也旨在培训神经网络。基于IMBO的培训师在欧文(UCI)机器学习存储库中从加利福尼亚大学获得的15个流行的分类数据集进行了测试。结果将结果与文献中的各种技术进行了比较,包括原始MBO和GCMBO。据观察,IMBO显着提高了神经网络的学习,证明了这种算法解决具有挑战性问题的优点。

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