2021
DOI: 10.48550/arxiv.2112.00890
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Counterfactual Explanations via Latent Space Projection and Interpolation

Abstract: Counterfactual explanations represent the minimal change to a data sample that alters its predicted classification, typically from an unfavorable initial class to a desired target class. Counterfactuals help answer questions such as "what needs to change for this application to get accepted for a loan?". A number of recently proposed approaches to counterfactual generation give varying definitions of "plausible" counterfactuals and methods to generate them. However, many of these methods are computationally in… Show more

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