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Main Authors: Agarwal, Abhineet, Kenney, Ana M., Tan, Yan Shuo, Tang, Tiffany M., Yu, Bin
Format: Preprint
Published: 2023
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Online Access:https://arxiv.org/abs/2307.01932
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author Agarwal, Abhineet
Kenney, Ana M.
Tan, Yan Shuo
Tang, Tiffany M.
Yu, Bin
author_facet Agarwal, Abhineet
Kenney, Ana M.
Tan, Yan Shuo
Tang, Tiffany M.
Yu, Bin
contents Random forests (RFs) are among the most popular supervised learning algorithms due to their nonlinear flexibility and ease-of-use. However, as black box models, they can only be interpreted via algorithmically-defined feature importance methods, such as Mean Decrease in Impurity (MDI), which have been observed to be highly unstable and have ambiguous scientific meaning. Furthermore, they can perform poorly in the presence of smooth or additive structure. To address this, we reinterpret decision trees and MDI as linear regression and $R^2$ values, respectively, with respect to engineered features associated with the tree's decision splits. This allows us to combine the respective strengths of RFs and generalized linear models in a framework called RF+, which also yields an improved feature importance method we call MDI+. Through extensive data-inspired simulations and real-world datasets, we show that RF+ improves prediction accuracy over RFs and that MDI+ outperforms popular feature importance measures in identifying signal features, often yielding more than a 10% improvement over its closest competitor. In case studies on drug response prediction and breast cancer subtyping, we further show that MDI+ extracts well-established genes with significantly greater stability compared to existing feature importance measures.
format Preprint
id arxiv_https___arxiv_org_abs_2307_01932
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Integrating Random Forests and Generalized Linear Models for Improved Accuracy and Interpretability
Agarwal, Abhineet
Kenney, Ana M.
Tan, Yan Shuo
Tang, Tiffany M.
Yu, Bin
Methodology
Artificial Intelligence
Machine Learning
Random forests (RFs) are among the most popular supervised learning algorithms due to their nonlinear flexibility and ease-of-use. However, as black box models, they can only be interpreted via algorithmically-defined feature importance methods, such as Mean Decrease in Impurity (MDI), which have been observed to be highly unstable and have ambiguous scientific meaning. Furthermore, they can perform poorly in the presence of smooth or additive structure. To address this, we reinterpret decision trees and MDI as linear regression and $R^2$ values, respectively, with respect to engineered features associated with the tree's decision splits. This allows us to combine the respective strengths of RFs and generalized linear models in a framework called RF+, which also yields an improved feature importance method we call MDI+. Through extensive data-inspired simulations and real-world datasets, we show that RF+ improves prediction accuracy over RFs and that MDI+ outperforms popular feature importance measures in identifying signal features, often yielding more than a 10% improvement over its closest competitor. In case studies on drug response prediction and breast cancer subtyping, we further show that MDI+ extracts well-established genes with significantly greater stability compared to existing feature importance measures.
title Integrating Random Forests and Generalized Linear Models for Improved Accuracy and Interpretability
topic Methodology
Artificial Intelligence
Machine Learning
url https://arxiv.org/abs/2307.01932