Practical considerations for Machine Learning Classification - AskSid

#artificialintelligence 

There is something very satisfying when you build a machine learning classifier using a toy dataset. We can achieve high accuracy and feel good inside while doing it. But this doesn't really help us or prepare us for real-world datasets and the issues it poses. If you have ever trained a machine learning classification model, you may have come across this issue. People use different words for it. 'Imbalanced dataset', 'Model is Skewed', etc. Let's say we are training a model to detect spam emails.

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