Precision
Precision is a metric used in classification tasks to measure how many of the predicted positive results are actually correct. It is also known as the positive predictive value.
Definition
Where:
- TP = True Positives – correct positive predictions
- FP = False Positives – incorrect positive predictions
Precision helps to answer the question: "Of all the items labeled as positive, how many are truly positive?"
Simple Example
Imagine a spam filter that marked 100 emails as spam. Out of these, 80 were actually spam, and 20 were not.
- TP = 80
- FP = 20
Then,
This means that 80% of emails flagged as spam were truly spam.
When to Use Precision
Precision is especially important when the cost of false positives is high.
Real-World Scenarios
- Medical testing: Avoiding telling a healthy person they are sick.
- Email spam detection: Ensuring important emails aren't marked as spam.
- Search engines: Returning highly relevant search results.
High vs Low Precision
- High Precision: Most positive predictions are correct.
- Low Precision: Many false alarms (false positives).
Related Metrics
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