Jump to content

Feature engineering: Difference between revisions

No edit summary
Line 9: Line 9:


==Why is feature engineering important?==
==Why is feature engineering important?==
Feature engineering is important in machine learning for several reasons. First, it helps to improve the performance and [[accuracy]] of machine learning models by providing a more informative and discriminative representation of the data. Second, it helps to reduce the [[dimensionality]] of the data by removing irrelevant or redundant features, which can simplify the learning process and improve computational efficiency. Third, it can help to address issues such as [[overfitting]] and [[underfitting]] by providing a better balance between [[bias]] and [[variance]]. Finally, feature engineering can help to enhance the interpretability and explainability of machine learning models, which is essential in many real-world applications.
Feature engineering is essential in machine learning for several reasons. Firstly, it improves performance and [[accuracy]] of [[models]] by providing a more informative representation of data. Secondly, it reduces [[dimensionality]] by eliminating irrelevant or redundant features which simplifies the learning process and increases computational efficiency. Thirdly, feature engineering helps address issues like [[overfitting]] or [[underfitting]] by maintaining an appropriate balance between [[bias]] and [[variance]]. Finally, feature engineering improves the interpretability and explainability of machine learning models - essential qualities required in many real-world applications.


==What are the types of feature engineering?==
==What are the types of feature engineering?==