基于MVO和SA的多层感知器学习过程优化混合算法

IF 1.6 3区 工程技术 Q4 ENGINEERING, INDUSTRIAL International Journal of Industrial Engineering Computations Pub Date : 2022-01-01 DOI:10.5267/j.ijiec.2022.5.003
Ö. Yılmaz, A. A. Altun, Murat Köklü
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引用次数: 3

摘要

人工神经网络(ann)是一种人工智能技术,用于解决几乎所有行业(如教育、卫生、化学、食品、信息学、物流、运输)中遇到的现实问题和应用。人工神经网络广泛应用于优化、建模、分类、预测等诸多技术领域,在规划、库存管理、维修、质量控制、计量经济学、供应链管理、物流等领域开展了大量与人工神经网络相关的实证研究。人工神经网络最重要也是最难的阶段是学习过程。这个过程是关于在不同数据集的搜索空间中找到最优值。在这个过程中,训练算法产生的值被用作网络参数,直接影响神经网络的成功。在传统的训练方法中,会遇到局部最优和慢收敛等问题。面对这种消极情况,人工神经网络训练的元启发式算法已经在许多研究中作为一种替代方法被使用。本文提出了一种新的混合算法MVOSANN,利用模拟退火(SA)和多重宇宙优化器(MVO)算法来训练人工神经网络。提出的MVOSANN算法已经在12个流行的分类数据集上进行了实验。MVOSANN的生产率与12种公认的和当前的元启发式算法进行了比较。实验结果表明,MVOSANN产生了非常成功和有竞争力的结果。
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Optimizing the learning process of multi-layer perceptrons using a hybrid algorithm based on MVO and SA
Artificial neural networks (ANNs) are one of the artificial intelligence techniques used in real-world problems and applications encountered in almost all industries such as education, health, chemistry, food, informatics, logistics, transportation. ANN is widely used in many techniques such as optimization, modelling, classification and forecasting, and many empirical studies have been carried out in areas such as planning, inventory management, maintenance, quality control, econometrics, supply chain management and logistics related to ANN. The most important and just as hard stage of ANNs is the learning process. This process is about finding optimal values in the search space for different datasets. In this process, the values generated by training algorithms are used as network parameters and are directly effective in the success of the neural network (NN). In classical training techniques, problems such as local optimum and slow convergence are encountered. Meta-heuristic algorithms for the training of ANNs in the face of this negative situation have been used in many studies as an alternative. In this study, a new hybrid algorithm namely MVOSANN is suggested for the training of ANNs, using Simulated annealing (SA) and Multi-verse optimizer (MVO) algorithms. The suggested MVOSANN algorithm has been experimented on 12 prevalently classification datasets. The productivity of MVOSANN has been compared with 12 well-recognized and current meta-heuristic algorithms. Experimental results show that MVOSANN produces very successful and competitive results.
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来源期刊
CiteScore
5.70
自引率
9.10%
发文量
35
审稿时长
20 weeks
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