用裸骨烟花算法调优卷积神经网络超参数

IF 1.2 4区 计算机科学 Q4 AUTOMATION & CONTROL SYSTEMS Studies in Informatics and Control Pub Date : 2022-03-30 DOI:10.24846/v31i1y202203
Ira Tuba, M. Veinovic, Eva Tuba, Romana Capor Hrosik, M. Tuba
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引用次数: 5

摘要

数字图像分类是各种应用中的重要组成部分。近年来,卷积神经网络作为分类器得到了广泛的应用,因为它具有较好的分类效果,而其应用相对简单。为了获得最好的结果,调整网络的超参数是必要的,但这代表了一个指数级的难优化问题,具有计算上非常昂贵的适应度函数。群体智能算法已被证明是解决这类指数级难优化问题的有效方法,但其在这类特殊问题上的应用还没有得到充分的研究。在本文中,卷积神经网络的超参数被调整为骨架烟花算法。在CIFAR-10和MNIST两个标准基准数据集上测试了所提方法的质量。将结果与CIFAR-Net、LeNet-5以及和谐搜索算法优化后的网络进行比较,从分类精度上考虑,本文方法取得了更好的结果。本文提出的CNN超参数调优方法在MNIST数据集上的分类准确率高达99.34%,在CIFAR-10数据集上的分类准确率高达75.51%,而专业文献中另一种方法的分类准确率分别为99.25%和74.76%。
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Tuning Convolutional Neural Network Hyperparameters by Bare Bones Fireworks Algorithm
: Digital image classification is an important component in various applications. Lately, convolutional neural networks have been widely used as a classifier since they achieve superior results, while their application is relatively simple. In order to achieve the best possible results, tuning of the network’s hyperparameters is necessary but that represents an exponentially hard optimization problem with computationally very expensive fitness function. The swarm intelligence algorithms have been proven to be effective in solving such exponentially hard optimization problems, however their application to this particular problem has not been sufficiently studied. In this paper, convolutional neural network hyperparameters were tuned by the bare bones fireworks algorithm. The quality of the proposed method was tested on two standard benchmark datasets, CIFAR-10 and MNIST. The results were compared to CIFAR-Net, LeNet-5 and the networks optimized by the harmony search algorithm and the proposed method achieved better results considering the classification accuracy. The proposed method for CNN hyperparameter tuning improved the classification accuracy up to 99.34% on the MNIST dataset and up to 75.51% on the CIFAR-10 dataset compared to 99.25% and 74.76% reported by another method from the specialized literature.
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来源期刊
Studies in Informatics and Control
Studies in Informatics and Control AUTOMATION & CONTROL SYSTEMS-OPERATIONS RESEARCH & MANAGEMENT SCIENCE
CiteScore
2.70
自引率
25.00%
发文量
34
审稿时长
>12 weeks
期刊介绍: Studies in Informatics and Control journal provides important perspectives on topics relevant to Information Technology, with an emphasis on useful applications in the most important areas of IT. This journal is aimed at advanced practitioners and researchers in the field of IT and welcomes original contributions from scholars and professionals worldwide. SIC is published both in print and online by the National Institute for R&D in Informatics, ICI Bucharest. Abstracts, full text and graphics of all articles in the online version of SIC are identical to the print version of the Journal.
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