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Tuning Convolutional Neural Network Hyperparameters by Bare Bones Fireworks Algorithm (CROSBI ID 308364)

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Tuba, Ira ; Veinović, Mladen Đuro ; Tuba, Eva ; Capor Hrošik, Romana ; Tuba, Milan Tuning Convolutional Neural Network Hyperparameters by Bare Bones Fireworks Algorithm // Studies in Informatics and Control, 31 (2022), 1; 25-35. doi: 10.24846/v31i1y202203

Podaci o odgovornosti

Tuba, Ira ; Veinović, Mladen Đuro ; Tuba, Eva ; Capor Hrošik, Romana ; Tuba, Milan

engleski

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.

convolutional neural networks ; hyperparameters tuning ; optimization ; swarm intelligence ; bare bones fireworks algorithm

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Podaci o izdanju

31 (1)

2022.

25-35

objavljeno

1220-1766

10.24846/v31i1y202203

Povezanost rada

Matematika, Računarstvo

Poveznice
Indeksiranost