cs.AI updates on arXiv.org 10月28日 12:14
AI协作:优化人类参与度策略研究
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本文探讨了在协作AI系统中,如何通过设计不同的适应人类行为的策略来提高人类参与度。研究发现,更关注人类行为的AI协作代理更受欢迎,且这种以人为中心的设计能提升AI协作的接受度而不降低性能。

arXiv:2503.00248v2 Announce Type: replace Abstract: Despite the growing interest in collaborative AI, designing systems that seamlessly integrate human input remains a major challenge. In this study, we developed a task to systematically examine human preferences for collaborative agents. We created and evaluated five collaborative AI agents with strategies that differ in the manner and degree they adapt to human actions. Participants interacted with a subset of these agents, evaluated their perceived traits, and selected their preferred agent. We used a Bayesian model to understand how agents' strategies influence the Human-AI team performance, AI's perceived traits, and the factors shaping human-preferences in pairwise agent comparisons. Our results show that agents who are more considerate of human actions are preferred over purely performance-maximizing agents. Moreover, we show that such human-centric design can improve the likability of AI collaborators without reducing performance. We find evidence for inequality-aversion effects being a driver of human choices, suggesting that people prefer collaborative agents which allow them to meaningfully contribute to the team. Taken together, these findings demonstrate how collaboration with AI can benefit from development efforts which include both subjective and objective metrics.

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协作AI 人类参与度 策略设计 AI性能 用户偏好
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