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Sekeroglu et al., 2020 - Google Patents

Review and analysis of hidden neuron number effect of shallow backpropagation neural networks

Sekeroglu et al., 2020

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Document ID
12094399551778997316
Author
Sekeroglu B
Dimililer K
Publication year
Publication venue
Neural Network World

External Links

Snippet

Shallow neural network implementations are still popular for real-life classification problems that require rapid achievements with limited data. Parameters selection such as hidden neuron number, learning rate and momentum factor of neural networks are the main …
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