Batch Normalization normalizes layer inputs per mini-batch to reduce internal covariate shift, allowing higher learning rates, less careful initialization, and faster convergence in deep networks.
Improving predictive inference under covariate shift by weighting the log-likelihood function
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Batch Normalization: Accelerating Deep Network Training by Reducing Internal Covariate Shift
Batch Normalization normalizes layer inputs per mini-batch to reduce internal covariate shift, allowing higher learning rates, less careful initialization, and faster convergence in deep networks.