The effect of batch size on the generalizability of the convolutional neural networks on a histopathology dataset
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Abstract
Many hyperparameters have to be tuned to have a robust convolutional neural network that will be able to accurately classify images. One of the most important hyperparameters is the batch size, which is the number of images used to train a single forward and backward pass. In this study, the effect of batch size on the performance of convolutional neural networks and the impact of learning rates will be studied for image classification, specifically for medical images. To train the network faster, a VGG16 network with ImageNet weights was used in this experiment. Our results concluded that a higher batch size does not usually achieve high accuracy, and the learning rate and the optimizer used will have a…
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Topics
Keywords
- Hyperparameter
- Convolutional neural network
- Generalizability theory
- Computer science
- Artificial intelligence
- Artificial neural network
- Pattern recognition (psychology)
- Deep learning
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