Data-Faithful Feature Attribution: Mitigating Unobservable Confounders via Instrumental Variables
–Neural Information Processing Systems
The state-of-the-art feature attribution methods often neglect the influence of unobservable confounders, posing a risk of misinterpretation, especially when it is crucial for the interpretation to remain faithful to the data. To counteract this, we propose a new approach, data-faithful feature attribution, which trains a confounder-free model using instrumental variables.
Neural Information Processing Systems
Oct-10-2025, 02:14:27 GMT
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