中文

Interpreting "Interpretability" and Explaining "Explainability" in Machine Learning in Physics

数据分析、统计与概率 2026-06-24 v1 星系天体物理 机器学习 高能物理 - 唯象学

摘要

We review the concepts of interpretability and explainability as they apply to machine learning in physics. We define interpretability as concerning the structural transparency of a model (the ability to understand or approximate its inner workings) and explainability as concerning the scientific content of a model (the ability to map it onto domain knowledge). We discuss the trade-offs each entails (interpretability vs. expressivity; explainability vs. adaptability), the contexts in which each is needed, and the intrinsic and post-hoc tools available for achieving them. Throughout, we emphasize that machine-learned models are subject to the same scientific questions as classical models, differing only in scale, and that interpretability and explainability are best understood as deliberate modeling choices rather than inherent properties. We also emphasize the importance of task specification and intervention plans as a core aspect of model design.

引用

@article{arxiv.2606.26228,
  title  = {Interpreting "Interpretability" and Explaining "Explainability" in Machine Learning in Physics},
  author = {Rikab Gambhir and Luisa Lucie-Smith and Jesse Thaler},
  journal= {arXiv preprint arXiv:2606.26228},
  year   = {2026}
}

备注

31 pages, 3 figures, Part of the VERaiPHY Initiative