Sound Explanation for Trustworthy Machine Learning
Machine Learning
2023-06-13 v1 Artificial Intelligence
Abstract
We take a formal approach to the explainability problem of machine learning systems. We argue against the practice of interpreting black-box models via attributing scores to input components due to inherently conflicting goals of attribution-based interpretation. We prove that no attribution algorithm satisfies specificity, additivity, completeness, and baseline invariance. We then formalize the concept, sound explanation, that has been informally adopted in prior work. A sound explanation entails providing sufficient information to causally explain the predictions made by a system. Finally, we present the application of feature selection as a sound explanation for cancer prediction models to cultivate trust among clinicians.
Cite
@article{arxiv.2306.06134,
title = {Sound Explanation for Trustworthy Machine Learning},
author = {Kai Jia and Pasapol Saowakon and Limor Appelbaum and Martin Rinard},
journal= {arXiv preprint arXiv:2306.06134},
year = {2023}
}