Concept

Techniques for Reducing Avoidable Bias

When a learning algorithm suffers from high avoidable bias, useful techniques include increasing model size, modifying input features based on error-analysis insights, reducing or eliminating regularization, and modifying the model architecture to better suit the problem. Adding more training data is not a helpful high-bias technique because it helps variance but usually has no significant effect on bias.

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Updated 2026-05-25

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