Detailed Information

Cited 0 time in webofscience Cited 0 time in scopus
Metadata Downloads

Finding and removing Clever Hans: Using explanation methods to debug and improve deep models

Authors
Anders, Christopher J.Weber, LeanderNeumann, DavidSamek, WojciechMueller, Klaus-RobertLapuschkin, Sebastian
Issue Date
1월-2022
Publisher
ELSEVIER
Keywords
Deep Neural Networks; Explainable Artificial Intelligence; Clever Hans predictors; Feature unlearning; Spectral Relevance Analysis; Class Artifact Compensation
Citation
INFORMATION FUSION, v.77, pp.261 - 295
Indexed
SCIE
SCOPUS
Journal Title
INFORMATION FUSION
Volume
77
Start Page
261
End Page
295
URI
https://scholar.korea.ac.kr/handle/2021.sw.korea/136571
DOI
10.1016/j.inffus.2021.07.015
ISSN
1566-2535
Abstract
Contemporary learning models for computer vision are typically trained on very large (benchmark) datasets with millions of samples. These may, however, contain biases, artifacts, or errors that have gone unnoticed and are exploitable by the model. In the worst case, the trained model does not learn a valid and generalizable strategy to solve the problem it was trained for, and becomes a ``Clever Hans'' predictor that bases its decisions on spurious correlations in the training data, potentially yielding an unrepresentative or unfair, and possibly even hazardous predictor. In this paper, we contribute by providing a comprehensive analysis framework based on a scalable statistical analysis of attributions from explanation methods for large data corpora. Based on a recent technique - Spectral Relevance Analysis - we propose the following technical contributions and resulting findings: (a) a scalable quantification of artifactual and poisoned classes where the machine learning models under study exhibit Clever Hans behavior, (b) several approaches we collectively denote as Class Artifact Compensation, which are able to effectively and significantly reduce a model's Clever Hans behavior, i.e., we are able to un-Hans models trained on (poisoned) datasets, such as the popular ImageNet data corpus. We demonstrate that Class Artifact Compensation, defined in a simple theoretical framework, may be implemented as part of a neural network's training or fine-tuning process, or in a post-hoc manner by injecting additional layers, preventing any further propagation of undesired Clever Hans features, into the network architecture. Using our proposed methods, we provide qualitative and quantitative analyses of the biases and artifacts in, e.g., the ImageNet dataset, the Adience benchmark dataset of unfiltered faces, and the ISIC 2019 skin lesion analysis dataset. We demonstrate that these insights can give rise to improved, more representative, and fairer models operating on implicitly cleaned data corpora.
Files in This Item
There are no files associated with this item.
Appears in
Collections
Graduate School > Department of Artificial Intelligence > 1. Journal Articles

qrcode

Items in ScholarWorks are protected by copyright, with all rights reserved, unless otherwise indicated.

Altmetrics

Total Views & Downloads

BROWSE