Towards Effective Human-AI Decision-Making: The Role of Human Learning in Appropriate Reliance on AI Advice
October 03, 2023 Β· Declared Dead Β· π International Conference on Interaction Sciences
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Authors
Max Schemmer, Andrea Bartos, Philipp Spitzer, Patrick Hemmer, Niklas KΓΌhl, Jonas Liebschner, Gerhard Satzger
arXiv ID
2310.02108
Category
cs.AI: Artificial Intelligence
Cross-listed
cs.HC
Citations
11
Venue
International Conference on Interaction Sciences
Last Checked
4 months ago
Abstract
The true potential of human-AI collaboration lies in exploiting the complementary capabilities of humans and AI to achieve a joint performance superior to that of the individual AI or human, i.e., to achieve complementary team performance (CTP). To realize this complementarity potential, humans need to exercise discretion in following AI 's advice, i.e., appropriately relying on the AI's advice. While previous work has focused on building a mental model of the AI to assess AI recommendations, recent research has shown that the mental model alone cannot explain appropriate reliance. We hypothesize that, in addition to the mental model, human learning is a key mediator of appropriate reliance and, thus, CTP. In this study, we demonstrate the relationship between learning and appropriate reliance in an experiment with 100 participants. This work provides fundamental concepts for analyzing reliance and derives implications for the effective design of human-AI decision-making.
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