Back to Search Start Over

A Guide to Feature Importance Methods for Scientific Inference

Authors :
Ewald, Fiona Katharina
Bothmann, Ludwig
Wright, Marvin N.
Bischl, Bernd
Casalicchio, Giuseppe
König, Gunnar
Publication Year :
2024

Abstract

While machine learning (ML) models are increasingly used due to their high predictive power, their use in understanding the data-generating process (DGP) is limited. Understanding the DGP requires insights into feature-target associations, which many ML models cannot directly provide, due to their opaque internal mechanisms. Feature importance (FI) methods provide useful insights into the DGP under certain conditions. Since the results of different FI methods have different interpretations, selecting the correct FI method for a concrete use case is crucial and still requires expert knowledge. This paper serves as a comprehensive guide to help understand the different interpretations of FI methods. Through an extensive review of FI methods and providing new proofs regarding their interpretation, we facilitate a thorough understanding of these methods and formulate concrete recommendations for scientific inference. We conclude by discussing options for FI uncertainty estimation and point to directions for future research aiming at full statistical inference from black-box ML models.<br />Comment: Accepted at the 2nd World Conference on eXplainable Artificial Intelligence, xAI-2024

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2404.12862
Document Type :
Working Paper