Hello Friends,
Mastering EDA and understanding the given data is very important in order for high performing Machine Learning Model. Refer to our earlier article on EDA to know more. Once mastering EDA, we use the insights from EDA for finding Feature Importance and then finally Feature Selection that explains the target variable better than other features. Below article helps you to understand more on Feature Importance and Feature Selection process.
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For more details, suggest to read this book “Approaching (Almost) Any Machine Learning Problem”
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