Arrow Research search
Back to ICLR

ICLR 2022

Consistent Counterfactuals for Deep Models

Conference Paper Poster Presentations Artificial Intelligence ยท Machine Learning

Abstract

Counterfactual examples are one of the most commonly-cited methods for explaining the predictions of machine learning models in key areas such as finance and medical diagnosis. Counterfactuals are often discussed under the assumption that the model on which they will be used is static, but in deployment models may be periodically retrained or fine-tuned. This paper studies the consistency of model prediction on counterfactual examples in deep networks under small changes to initial training conditions, such as weight initialization and leave-one-out variations in data, as often occurs during model deployment. We demonstrate experimentally that counterfactual examples for deep models are often inconsistent across such small changes, and that increasing the cost of the counterfactual, a stability-enhancing mitigation suggested by prior work in the context of simpler models, is not a reliable heuristic in deep networks. Rather, our analysis shows that a model's Lipschitz continuity around the counterfactual, along with confidence of its prediction, is key to its consistency across related models. To this end, we propose Stable Neighbor Search as a way to generate more consistent counterfactual explanations, and illustrate the effectiveness of this approach on several benchmark datasets.

Authors

Keywords

  • deep models
  • deep networks
  • explainability
  • counterfactual explanations
  • consistency
  • consistent predictions
  • model duplicity
  • random initialization

Context

Venue
International Conference on Learning Representations
Archive span
2013-2025
Indexed papers
10294
Paper id
435412054877179238