Saliency methods are a popular class of feature attribution explanation methods that aim to capture a model's predictive reasoning by identifying "important" pixels in an input image. However, the development and adoption of these methods are hindered by the lack of access to ground-truth model reasoning, which prevents accurate evaluation. In this work, we design a synthetic benchmarking framework, SMERF, that allows us to perform ground-truth-based evaluation while controlling the complexity of the model's reasoning. Experimentally, SMERF reveals significant limitations in existing saliency methods and, as a result, represents a useful tool for the development of new saliency methods.
@article{arxiv.2105.06506,
title = {Sanity Simulations for Saliency Methods},
author = {Joon Sik Kim and Gregory Plumb and Ameet Talwalkar},
journal= {arXiv preprint arXiv:2105.06506},
year = {2022}
}
Comments
Accepted to International Conference on Machine Learning (ICML 2022)