Saved in:
Bibliographic Details
Main Authors: Zhu, Jingyu, Apley, Daniel W.
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2512.21124
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866908731223048192
author Zhu, Jingyu
Apley, Daniel W.
author_facet Zhu, Jingyu
Apley, Daniel W.
contents A shortcoming of black-box supervised learning models is their lack of interpretability or transparency. To facilitate interpretation, post-hoc global variable importance measures (VIMs) are widely used to assign to each predictor or input variable a numerical score that represents the extent to which that predictor impacts the fitted model's response predictions across the training data. It is well known that the most common existing VIMs, namely marginal Shapley and marginal permutation-based methods, can produce unreliable results if the predictors are highly correlated, because they require extrapolation of the response at predictor values that fall far outside the training data. Conditional versions of Shapley and permutation VIMs avoid or reduce the extrapolation but can substantially deflate the importance of correlated predictors. For the related goal of visualizing the effects of each predictor when strong predictor correlation is present, accumulated local effects (ALE) plots were recently introduced and have been widely adopted. This paper presents a new VIM approach based on ALE concepts that avoids both the extrapolation and the VIM deflation problems when predictors are correlated. We contrast, both theoretically and numerically, ALE VIMs with Shapley and permutation VIMs. Our results indicate that ALE VIMs produce similar variable importance rankings as Shapley and permutation VIMs when predictor correlations are mild and more reliable rankings when correlations are strong. An additional advantage is that ALE VIMs are far less computationally expensive.
format Preprint
id arxiv_https___arxiv_org_abs_2512_21124
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Measuring Variable Importance via Accumulated Local Effects
Zhu, Jingyu
Apley, Daniel W.
Methodology
A shortcoming of black-box supervised learning models is their lack of interpretability or transparency. To facilitate interpretation, post-hoc global variable importance measures (VIMs) are widely used to assign to each predictor or input variable a numerical score that represents the extent to which that predictor impacts the fitted model's response predictions across the training data. It is well known that the most common existing VIMs, namely marginal Shapley and marginal permutation-based methods, can produce unreliable results if the predictors are highly correlated, because they require extrapolation of the response at predictor values that fall far outside the training data. Conditional versions of Shapley and permutation VIMs avoid or reduce the extrapolation but can substantially deflate the importance of correlated predictors. For the related goal of visualizing the effects of each predictor when strong predictor correlation is present, accumulated local effects (ALE) plots were recently introduced and have been widely adopted. This paper presents a new VIM approach based on ALE concepts that avoids both the extrapolation and the VIM deflation problems when predictors are correlated. We contrast, both theoretically and numerically, ALE VIMs with Shapley and permutation VIMs. Our results indicate that ALE VIMs produce similar variable importance rankings as Shapley and permutation VIMs when predictor correlations are mild and more reliable rankings when correlations are strong. An additional advantage is that ALE VIMs are far less computationally expensive.
title Measuring Variable Importance via Accumulated Local Effects
topic Methodology
url https://arxiv.org/abs/2512.21124