I am using the following model in Keras:
When I use Batch Normalization after each activation (Wx) and before non-linearity ReLu(Wx), the loss and accuracy of the validation is noisy (Red=Training_set / Blue=validation_set):
I've tried the following (but did not work):
1.Increase batch size from 64 to 256 2. Decrease learning rate 3. add L2-reg and/or dropout of different amplitude 4. train/validation split ratio: 20%, 30%. FYI, the dataset is the kaggle cats&dogs images.