BinaryClassificationMetrics Class
Definition
Important
Some information relates to prerelease product that may be substantially modified before it’s released. Microsoft makes no warranties, express or implied, with respect to the information provided here.
Evaluation results for binary classifiers, excluding probabilistic metrics.
public class BinaryClassificationMetrics
type BinaryClassificationMetrics = class
Public Class BinaryClassificationMetrics
- Inheritance
-
BinaryClassificationMetrics
- Derived
Properties
Accuracy |
Gets the accuracy of a classifier which is the proportion of correct predictions in the test set. |
AreaUnderPrecisionRecallCurve |
Gets the area under the precision/recall curve of the classifier. |
AreaUnderRocCurve |
Gets the area under the ROC curve. |
ConfusionMatrix |
The confusion matrix giving the counts of the true positives, true negatives, false positives and false negatives for the two classes of data. |
F1Score |
Gets the F1 score of the classifier, which is a measure of the classifier's quality considering both precision and recall. |
NegativePrecision |
Gets the negative precision of a classifier which is the proportion of correctly predicted negative instances among all the negative predictions (i.e., the number of negative instances predicted as negative, divided by the total number of instances predicted as negative). |
NegativeRecall |
Gets the negative recall of a classifier which is the proportion of correctly predicted negative instances among all the negative instances (i.e., the number of negative instances predicted as negative, divided by the total number of negative instances). |
PositivePrecision |
Gets the positive precision of a classifier which is the proportion of correctly predicted positive instances among all the positive predictions (i.e., the number of positive instances predicted as positive, divided by the total number of instances predicted as positive). |
PositiveRecall |
Gets the positive recall of a classifier which is the proportion of correctly predicted positive instances among all the positive instances (i.e., the number of positive instances predicted as positive, divided by the total number of positive instances). |