Analysis of the rate of convergence of an over-parametrized convolutional neural network image classifier learned by gradient descent

13 May 2024  ·  Michael Kohler, Adam Krzyzak, Benjamin Walter ·

Image classification based on over-parametrized convolutional neural networks with a global average-pooling layer is considered. The weights of the network are learned by gradient descent. A bound on the rate of convergence of the difference between the misclassification risk of the newly introduced convolutional neural network estimate and the minimal possible value is derived.

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