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Precision, Recall, F-1 score- Must Know Before Your Next Project!
Latest   Machine Learning

Precision, Recall, F-1 score- Must Know Before Your Next Project!

Last Updated on July 25, 2023 by Editorial Team

Author(s): Anmol Tomar

Originally published on Towards AI.

The intuition behind the classification evaluation metrics

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Pic Credit: Unsplash

Imagine you are building a fraud detection model to identify the fraudulent transactions done using a credit card. You look into the data and find that the majority of the transactions are non-fraudulent(99%), and only 1% of the transactions are fraudulent. You simply tagged every transaction as non-fraudulent and got an accuracy of 99%, WOW!

But, if you go to the client to deploy such a model, they will call you a FRAUD U+1F601.

The above scenario is an example of an imbalanced classification problem, and the β€œaccuracy” is… Read the full blog for free on Medium.

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