计算机科学
背景(考古学)
工作区
认知
认知负荷
认知心理学
认知科学
有界函数
工作记忆
认知模型
上下文切换
人工智能
认知系统
人机交互
上下文模型
作者
Peng Wang,Hongjun Liu,Liye Zou,Fred Paas
标识
DOI:10.1007/s10462-026-11510-z
摘要
Human cognition falters under overload because working memory is sharply limited, as described by Cognitive Load Theory. Advanced AI systems show parallel failures when tasks exceed context windows or cause model collapse. This review synthesizes these constraints through a unifying lens, revealing shared mechanisms like bounded workspaces and chunking, alongside divergences such as human metacognition. We introduce a “bounded agent complementarity” model that proposes dynamic load-balancing for symbiotic intelligence, with implications for reasoning in domains such as education, medicine, and aviation. The framework highlights ways to mitigate these mutual limits and yields testable predictions for augmented cognition and resilient human-AI systems.
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