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How it works...
A confusion matrix displays information about the actual and predicted classifications made by a model. The performance of such systems is evaluated with the help of data in the matrix.
The following table shows the confusion matrix for a two-class classifier:
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The entries in the confusion matrix have the following meanings:
- TP is the number of correct predictions that an instance is positive
- FN is the number of incorrect predictions that an instance is negative
- FP is the number of incorrect predictions that an instance is positive
- TN is the number of correct predictions that an instance is negative