arXiv Analytics

Sign in

arXiv:2407.14509 [cs.CV]AbstractReferencesReviewsResources

DEPICT: Diffusion-Enabled Permutation Importance for Image Classification Tasks

Sarah Jabbour, Gregory Kondas, Ella Kazerooni, Michael Sjoding, David Fouhey, Jenna Wiens

Published 2024-07-19Version 1

We propose a permutation-based explanation method for image classifiers. Current image-model explanations like activation maps are limited to instance-based explanations in the pixel space, making it difficult to understand global model behavior. In contrast, permutation based explanations for tabular data classifiers measure feature importance by comparing model performance on data before and after permuting a feature. We propose an explanation method for image-based models that permutes interpretable concepts across dataset images. Given a dataset of images labeled with specific concepts like captions, we permute a concept across examples in the text space and then generate images via a text-conditioned diffusion model. Feature importance is then reflected by the change in model performance relative to unpermuted data. When applied to a set of concepts, the method generates a ranking of feature importance. We show this approach recovers underlying model feature importance on synthetic and real-world image classification tasks.

Related articles: Most relevant | Search more
arXiv:2106.10479 [cs.CV] (Published 2021-06-19)
Practical Transferability Estimation for Image Classification Tasks
arXiv:2106.15324 [cs.CV] (Published 2021-06-16)
Effective Evaluation of Deep Active Learning on Image Classification Tasks
arXiv:2211.16040 [cs.CV] (Published 2022-11-29)
AdvMask: A Sparse Adversarial Attack Based Data Augmentation Method for Image Classification