Translations:Overfitting and Regularization/36/en

    From Marovi AI
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    1. Start with a model large enough to overfit the training data — this confirms the model has sufficient capacity.
    2. Add regularization incrementally (dropout, weight decay, augmentation) and monitor validation performance.
    3. Use early stopping as a safety net.
    4. Prefer more training data over stronger regularization whenever possible — regularization is a substitute for data, not a replacement.
    5. Tune the regularization strength ($ \lambda $, dropout rate) using a validation set, never the test set.