Radiuk, 2017 - Google Patents
Impact of training set batch size on the performance of convolutional neural networks for diverse datasetsRadiuk, 2017
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- 2870129349595582685
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- Radiuk P
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Анотація 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 …
- 230000001537 neural 0 title abstract description 16
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