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Topic:feature selection

feature selection

Since 2021, aggregated from related topics

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    Feature selection is the process of selecting a subset of relevant features or variables from a larger set of available features, in order to improve the performance of a machine learning model. This can be done to reduce overfitting, improve model accuracy, and increase model interpretability. Feature selection methods can be filter-based, wrapper-based, or embedded, and may involve techniques such as correlation analysis, recursive feature elimination, and principal component analysis. Overall, feature selection plays a crucial role in building effective and efficient machine learning models.

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