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An efficient chaotic mutative moth-flame-inspired optimizer for global optimization tasks

机译:一种高效的混沌突变蛾激发优化优化优化优化优化优化优化任务

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Moth-flame optimization algorithm (MFO) is a new nature-inspired meta-heuristic based on the navigation routine of moths in the environment known as transverse orientation. For some complex optimization tasks, especially high dimensional and multimodal problems, the conventional MFO may face problems in the convergence trends or be trapped into the local and deceptive optima. Therefore, in this study, two strategies have been introduced into the conventional MFO to get a more stable sense of balance between the exploration and exploitation propensities. First, Gaussian mutation is employed to increase the population diversity of MFO. Then, a chaotic local search is applied to the flame updating process of MFO for better exploiting the locality of the solutions. The proposed CLSGMFO approach was compared against a wide range of well-known classical metaheuristic algorithms (MAs) and various advanced MAs using 23 classical benchmark functions. It was shown that the designed CLSGMFO can outperform most of the popular MAs in terms of solution quality and convergence speed. Moreover, based on CLSGMFO, a hybrid kernel extreme learning machine model, which is called CLSGMFO-KELM, is established to deal with financial stress prediction scenarios. To investigate the effectiveness of the CLSGMFO-KELM model, the proposed hybrid system was tested on two widely used financial datasets and compared against a broad array of popular classifiers. The results demonstrate that the proposed learning scheme can offer a superior kernel extreme learning machine model with excellent predictive performance. Accordingly, the proposed CLSGMFO can serve as an effective and efficient computer-aided tool for financial prediction. (C) 2019 Elsevier Ltd. All rights reserved.
机译:飞蛾 - 火焰优化算法(MFO)是一种基于被称为横向的环境的导航例程的新的自然启发性荟萃启发式。对于一些复杂的优化任务,尤其是高维和多模式问题,传统的MFO可能面临收敛趋势的问题或被捕获到局部和欺骗性最佳。因此,在本研究中,已经将两种策略引入传统的MFO中,以在勘探和开发能力之间获得更稳定的平衡感。首先,采用高斯突变来增加MFO的人口多样性。然后,将混沌本地搜索应用于MFO的火焰更新过程,以便更好地利用解决方案的局部性。将拟议的CLSGMFO方法与各种着名的经典成群质算法(MAS)和各种先进的MAS进行比较,使用23古典基准功能。结果表明,设计的CLSGMFO可以在解决方案质量和收敛速度方面优于大多数流行的MAS。此外,基于CLSGMFO,建立了一种称为CLSGMFO-KELM的混合内核极端学习机模型,以处理财务压力预测场景。为了调查CLSGMFO-KELM模型的有效性,在两个广泛使用的金融数据集上测试了所提出的混合系统,并与广泛的流行分类器进行比较。结果表明,所提出的学习方案可以提供具有优异的预测性能的优质内核极端学习机模型。因此,所提出的CLSGMFO可以作为用于金融预测的有效和有效的计算机辅助工具。 (c)2019 Elsevier Ltd.保留所有权利。

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