Table 1.
Metric | Advantages | Disadvantages |
---|---|---|
ROC | 1. Simple graphical representation and exact measure of the accuracy of a test. 2. Performs equally well on both classes in balanced datasets. 3. The AUC is used as a simple numeric rating of diagnostic test accuracy. |
1. Actual decision thresholds are usually not displayed. 2. As the sample size decreases, the plot becomes irregular. 3. Not considered a good indicator for early enrichment of true active samples. |
PR | 1. Points out the efficiency of the model. 2. Shows how much the data are biased towards one class. 3. Helps understand whether the model is performing well in imbalanced datasets. |
1. It does not deal with all the cells of the confusion matrix. True negatives are never considered. 2. Focuses only on positive class. 3. Only suited for binary classification. |