Overfitting and Underfitting
Overfitting and Underfitting
The core challenge in ML: finding the sweet spot between too simple and too complex.
The Bias-Variance Tradeoff
Loading Python Playground...
Detecting Overfitting
Loading Python Playground...
Preventing Overfitting
Loading Python Playground...
Key Takeaways
- Underfitting: Too simple, high bias, bad everywhere
- Overfitting: Too complex, high variance, memorizes training data
- Detection: Compare training vs test performance
- Prevention: Regularization, simpler models, more data, cross-validation
Quiz
Question 1 of 520% Complete
0 of 5 questions answered

