TPR,FPR,FNR,TNR, Confusion Matrix
In this video we will be having a detailed discussion about the True Positive rate, True Negative Rate, False Positive Rate and False Negative rate. We will also understand True .Please subscribe and press the bell notification for more interesting content #TPR,FPR,TNR,FNR Data science Interview question playlist: • Data Science interview questions Machine Learning playlist: • Data Science and Machine Learning with Pyt... You can buy my book where I have provided a detailed explanation of how we can use Machine Learning, Deep Learning in Finance using python Packt url : https://prod.packtpub.com/in/big-data... Amazon url: https://www.amazon.com/Hands-Python-F...

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