• Loss on training data
    • large:
      • model bias -> add features
      • optimization -> change optimization methods
    • small:
      • loss on testing data
        • large:
          • overfitting:
            • (1) more training data, data augmentation
            • (2) make model simpler
        • small:
          • mismatch