Impact of Training Set Batch Size on the Performance of Convolutional Neural Networks for Diverse Datasets
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Радюк, Павло Михайлович
Radiuk, Pavlo M.
Радюк, П. М.
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Abstract
A problem of improving the performance of
convolutional neural networks is considered. A parameter of the
training set is investigated. The parameter is the batch size. The
goal is to find an impact of training set batch size on the
performance. To get consistent results, diverse datasets are used
They are MNIST and CIFAR-10. Simplicity of the MNIST dataset
stands against complexity of the CIFAR-10 dataset, although the
simpler dataset has 10 classes as well as the more complicated one
To achieve acceptable testing results, various convolutional neural
network architectures are selected for the MNIST and CIFAR-10
datasets, with two and five convolutional layers, respectively. The
assumption about the dependence of the recognition accuracy on
the batch size value is confirmed: the larger the batch size value
the higher the recognition accuracy. Another assumption about
the impact of the type of the batch size value on the CNN
performance is not confirmed.
Description
Radiuk P. M. Impact of Training Set Batch Size on the Performance of Convolutional Neural Networks for Diverse DatasetsInformation / P. M. Radiuk // Technology and Management Science. – 2017. –№ 20. – Р. 20-24. doi: 10.1515/itms-2017-0003
Citation
Radiuk P. M. Impact of Training Set Batch Size on the Performance of Convolutional Neural Networks for Diverse DatasetsInformation / P. M. Radiuk // Technology and Management Science. – 2017. –№ 20. – Р. 20-24. doi: 10.1515/itms-2017-0003