Feature Engineering in Machine Learning
Pickl AI
JANUARY 3, 2024
EDA, imputation, encoding, scaling, extraction, outlier handling, and cross-validation ensure robust models. Feature Engineering enhances model performance, and interpretability, mitigates overfitting, accelerates training, improves data quality, and aids deployment. What is Feature Engineering?
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