菜单

关于 🐙 GitHub
arXiv 提交日期: 2026-03-24
📄 Abstract - Biased Error Attribution in Multi-Agent Human-AI Systems Under Delayed Feedback

Human decision-making is strongly influenced by cognitive biases, particularly under conditions of uncertainty and risk. While prior work has examined bias in single-step decisions with immediate outcomes and in human interaction with a single autonomous agent, comparatively little attention has been paid to decision-making under delayed outcomes involving multiple AI agents, where decisions at each step affect subsequent states. In this work, we study how delayed outcomes shape decision-making and responsibility attribution in a multi-agent human-AI task. Using a controlled game-based experiment, we analyze how participants adjust their behavior following positive and negative outcomes. We observe asymmetric responses to gains and losses, with stronger corrective adjustments after negative outcomes. Importantly, participants often fail to correctly identify the actions that caused failure and misattribute responsibility across AI agents, leading to systematic revisions of decisions that are weakly related to the underlying causes of poor performance. We refer to this phenomenon as a form of attribution bias, manifested as biased error attribution under delayed feedback. Our findings highlight how cognitive biases can be amplified in human-AI systems with delayed outcomes and multiple autonomous agents, underscoring the need for decision-support systems that better support causal understanding and learning over time.

顶级标签: multi-agents systems behavior
详细标签: attribution bias delayed feedback human-ai interaction decision-making cognitive bias 或 搜索:

延迟反馈下多智能体人机协作系统中的偏见性错误归因 / Biased Error Attribution in Multi-Agent Human-AI Systems Under Delayed Feedback


1️⃣ 一句话总结

这项研究发现,在多个人工智能体协作且结果反馈延迟的任务中,人类决策者会错误地将失败责任归咎于不相关的智能体,并因此做出无效的行为调整,这揭示了一种因延迟反馈而被放大的认知偏见。

源自 arXiv: 2603.23419