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Improving Model Understanding and Trust with Counterfactual Explanations of Model Confidence (2206.02790v1)
Published 6 Jun 2022 in cs.LG, cs.AI, and cs.HC
Abstract: In this paper, we show that counterfactual explanations of confidence scores help users better understand and better trust an AI model's prediction in human-subject studies. Showing confidence scores in human-agent interaction systems can help build trust between humans and AI systems. However, most existing research only used the confidence score as a form of communication, and we still lack ways to explain why the algorithm is confident. This paper also presents two methods for understanding model confidence using counterfactual explanation: (1) based on counterfactual examples; and (2) based on visualisation of the counterfactual space.