GitHub / janasatvika / Optimizing-Classification-Models-using-Permutation-Feature-Importance-Method
High data dimensionality and irrelevant features can negatively impact the performance of machine learning algorithms. This repository implements the Permutation feature importance method to enhance the performance of some machine learning models by identifying the contribution of each feature used.
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Language: Jupyter Notebook
Size: 1.99 MB
Dependencies parsed at: Pending
Created at: about 1 year ago
Updated at: about 1 year ago
Pushed at: about 1 year ago
Last synced at: about 1 year ago
Topics: classification, decision-trees, feature-importance, feature-selection, feature-selection-methods, k-nearest-neighbors, optimization-algorithms, optimization-methods, permutation-feature-importance, permutation-importance, predictive-modeling, relevant-feature-analysis, support-vector-machines, wrapper-methods