2024
DOI: 10.1088/1402-4896/ad49dc
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A simple theory for training response of deep neural networks

Kenichi Nakazato

Abstract: Deep neural networks give us a powerful method to model the training dataset’s relationship between input and output. We can regard that as a complex adaptive system consisting of many artificial neurons that work as an adaptive memory as a whole. The network’s behavior is training dynamics with a feedback loop from the evaluation of the loss function. We already know the training response can be constant or shows power law-like aging in some ideal situations. However, we still have gaps between those findings… Show more

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