Entry
How the different explanation classes impact trust calibration: The case of clinical decision support systems
Mohammad Naiseh, Dena Al-Thani, Nan Jiang, Raian Ali
Evaluates four explanation classes during human-AI decision-making tasks: providing explanations can paradoxically induce over-reliance on AI recommendations, even when two classes are perceived more understandable.
·XAI ·trust calibration ·CDSS ·over-reliance ·explanation design
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