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Machine Learning - Interview Questions
Differentiate Precision, Recall, Accuracy, and the F1 Score?
Precision is the ratio of correctly predicted positive observation and total predicted positive observation. It shows how precise our model is.

* Precision = TP/TP+FP


Recall is the ratio of the correct predicted positive observation and the total observation in the class.

* Recall = TP/TP+FN


F1-Score is the weighted average of recall and precision.

* F1-Score = 2*(Recall * Precision) / (Recall + Precision)


Accuracy is the ratio of correctly predicted positive observations to the total positive observations.

* Accuracy = TP+TN/TP+TN+FP+FN
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