2023
DOI: 10.3758/s13421-023-01407-5
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How people reason with counterfactual and causal explanations for Artificial Intelligence decisions in familiar and unfamiliar domains

Abstract: Few empirical studies have examined how people understand counterfactual explanations for other people’s decisions, for example, “if you had asked for a lower amount, your loan application would have been approved”. Yet many current Artificial Intelligence (AI) decision support systems rely on counterfactual explanations to improve human understanding and trust. We compared counterfactual explanations to causal ones, i.e., “because you asked for a high amount, your loan application was not approved”, for an AI… Show more

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Cited by 12 publications
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