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📄 Abstract
Abstract: Recent work on counterfactual visual explanations has contributed to making
artificial intelligence models more explainable by providing visual
perturbation to flip the prediction. However, these approaches neglect the
causal relationships and the spurious correlations behind the image generation
process, which often leads to unintended alterations in the counterfactual
images and renders the explanations with limited quality. To address this
challenge, we introduce a novel framework CECAS, which first leverages a
causally-guided adversarial method to generate counterfactual explanations. It
innovatively integrates a causal perspective to avoid unwanted perturbations on
spurious factors in the counterfactuals. Extensive experiments demonstrate that
our method outperforms existing state-of-the-art approaches across multiple
benchmark datasets and ultimately achieves a balanced trade-off among various
aspects of validity, sparsity, proximity, and realism.