启发式
计算机科学
启发式
认知
合理规划模型
认知资源理论
管理科学
人工智能
运筹学
心理学
经济
数学
操作系统
神经科学
管理
作者
Frederick Callaway,Bas van Opheusden,Sayan Gul,Priyam Das,Paul M. Krueger,Thomas L. Griffiths,Falk Lieder
标识
DOI:10.1038/s41562-022-01332-8
摘要
Making good decisions requires thinking ahead, but the huge number of actions and outcomes one could consider makes exhaustive planning infeasible for computationally constrained agents, such as humans. How people are nevertheless able to solve novel problems when their actions have long-reaching consequences is thus a long-standing question in cognitive science. To address this question, we propose a model of resource-constrained planning that allows us to derive optimal planning strategies. We find that previously proposed heuristics such as best-first search are near optimal under some circumstances but not others. In a mouse-tracking paradigm, we show that people adapt their planning strategies accordingly, planning in a manner that is broadly consistent with the optimal model but not with any single heuristic model. We also find systematic deviations from the optimal model that might result from additional cognitive constraints that are yet to be uncovered.
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