Counterfactual Generation Under Confounding
Abbavaram Gowtham Reddy, Saloni Dash, Amit Sharma, Vineeth N, Balasubramanian

TL;DR
This paper introduces a flexible counterfactual generation method to mitigate confounding effects in image classification, improving model robustness by generating diverse counterfactuals and regularizing representations.
Contribution
It provides a formal analysis of confounding effects and proposes a novel, efficient counterfactual generation technique that handles multiple attributes and confounders.
Findings
Effective counterfactual generation under high confounding.
Improved classifier robustness and invariance.
Works on synthetic and real-world datasets.
Abstract
A machine learning model, under the influence of observed or unobserved confounders in the training data, can learn spurious correlations and fail to generalize when deployed. For image classifiers, augmenting a training dataset using counterfactual examples has been empirically shown to break spurious correlations. However, the counterfactual generation task itself becomes more difficult as the level of confounding increases. Existing methods for counterfactual generation under confounding consider a fixed set of interventions (e.g., texture, rotation) and are not flexible enough to capture diverse data-generating processes. Given a causal generative process, we formally characterize the adverse effects of confounding on any downstream tasks and show that the correlation between generative factors (attributes) can be used to quantitatively measure confounding between generative…
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Taxonomy
TopicsGenerative Adversarial Networks and Image Synthesis · Image Processing and 3D Reconstruction · Image Retrieval and Classification Techniques
Methodsfail
