Methods to Minimize False Negatives and False Positives in Binary Classification
When we build a Machine Learning model, different scenarios arise like overfitting, underfitting, dip in Recall and Precision values etc. Now when there is a dip in Precision value, we can say with certainty that there has been increase in False Positives and when there is a dip in Recall value, the