Beginner · Evaluation
Mean Squared Error (MSE)
Visual diagram · (in preparation) · Math · (in preparation) · Worked example · 3 difficulty levels.
TL;DR. The average squared difference between predictions and true values.
Technical Definition
The average squared difference between predictions and true values.
How it works
MSE = (1/n) Σ (ŷᵢ − yᵢ)². Heavily penalizes large errors, making it sensitive to outliers. The default loss for regression and the basis of RMSE (its square root, in original units).
Related Concepts
- Loss Function — A mathematical function that measures how far the model's predictions are from the actual values, guiding the learning process.
- Regression — A supervised learning task that predicts a continuous numeric value.
- Mean Absolute Error (MAE) — The average absolute difference between predictions and true values.