JMLR

EMaP: Explainable AI with Manifold-based Perturbations

Authors
Minh Nhat Vu Huy Quang Mai My T. Thai
Research Topics
Machine Learning
Paper Information
  • Journal:
    Journal of Machine Learning Research
  • Added to Tracker:
    Sep 08, 2025
Abstract

In the last few years, many explanation methods based on the perturbations of input data have been introduced to shed light on the predictions generated by black-box models. The goal of this work is to introduce a novel perturbation scheme so that more faithful and robust explanations can be obtained. Our study focuses on the impact of perturbing directions on the data topology. We show that perturbing along the orthogonal directions of the input manifold better preserves the data topology, both in the worst-case analysis of the discrete Gromov-Hausdorff distance and in the average-case analysis via persistent homology. From those results, we introduce EMaP algorithm, realizing the orthogonal perturbation scheme. Our experiments show that EMaP not only improves the explainers' performance but also helps them overcome a recently developed attack against perturbation-based explanation methods.

Author Details
Minh Nhat Vu
Author
Huy Quang Mai
Author
My T. Thai
Author
Research Topics & Keywords
Machine Learning
Research Area
Citation Information
APA Format
Minh Nhat Vu , Huy Quang Mai & My T. Thai . EMaP: Explainable AI with Manifold-based Perturbations. Journal of Machine Learning Research .
BibTeX Format
@article{paper489,
  title = { EMaP: Explainable AI with Manifold-based Perturbations },
  author = { Minh Nhat Vu and Huy Quang Mai and My T. Thai },
  journal = { Journal of Machine Learning Research },
  url = { https://www.jmlr.org/papers/v26/22-1157.html }
}