Been working on an image classification model lately - the training accuracy looks great, but the validation accuracy seems to plateau around 88–90%.
I’ve already tried data augmentation and dropout tuning, but the improvement is marginal.
Curious to know - what’s your go-to approach when your model just refuses to generalise better? Do you usually tweak the architecture, try transfer learning, or focus on data cleaning?