Learning in the machine: Random backpropagation and the deep learning channel

Artificial Intelligence 260 (C):1-35 (2018)
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References found in this work

The dropout learning algorithm.Pierre Baldi & Peter Sadowski - 2014 - Artificial Intelligence 210 (C):78-122.

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