sharmapulkit / FACE-Feasible-Actionable-Counterfactual-Explanations
Implementation of the paper titled: "FACE: Feasible and actionable counterfactual recourse" by Rafael et. at. - https://arxiv.org/pdf/1909.09369.pdf
☆13Updated 4 years ago
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