Beginner · Evaluation
Accuracy
Visual diagram · (in preparation) · Math · (in preparation) · Worked example · 3 difficulty levels.
TL;DR. The fraction of predictions a model gets correct on a labeled dataset.
Technical Definition
The fraction of predictions a model gets correct on a labeled dataset.
How it works
Accuracy = (correct predictions) / (total predictions). Simple and intuitive, but misleading when classes are imbalanced — predicting 'no fraud' on every transaction can achieve 99% accuracy while being useless. Pair it with precision, recall, and F1 for a fuller picture.
Related Concepts
- Precision & Recall — Complementary metrics measuring classifier accuracy on positive predictions (precision) and ability to find all positives (recall).
- F1 Score — The harmonic mean of precision and recall, balancing both into a single number.
- Confusion Matrix — A table showing true vs predicted labels for every class.