Feature importance is easily determined by evaluating the average relative position of each feature across all decision trees in either the random forest or XGBoost methods.
收藏Figshare2021-04-05 更新2026-04-28 收录
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https://figshare.com/articles/dataset/Feature_importance_is_easily_determined_by_evaluating_the_average_relative_position_of_each_feature_across_all_decision_trees_in_either_the_random_forest_or_XGBoost_methods_/14372494
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Features closer to the root of the trees are more important to overall classification decision. This spreadsheet describes the relative importance of the 80 extracted features from a trained random forest model, describes the image filtering functions use for feature extraction including their parameterization, and defines which Python libraries were used. Model transparency and interpretability is a key advantage of decision-tree based methods such as random forest or XGBoost. Other methods, such as neural networks, are often impossible to interpret or understand. (XLSX)
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2021-04-05



