Batch Normalization: Accelerating Deep Network Training …
vector, and Xbe the set of these inputs over the training data set. The normalization can then be written as a trans-formation bx = Norm(x,X) which depends not only on the given training example x
Training, Network, Deep, Accelerating, Batch, Batch normalization, Normalization, Accelerating deep network training
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