人类理性地平衡详细的和暂时抽象的世界模型。

Ari E Kahn, Nathaniel D Daw
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引用次数: 0

摘要

人们如何模拟世界的动态来指导心理模拟和评估选择?一种突出的方法,后继表示(SR),利用了未来状态的时间抽象:通过在多个时间步上聚合轨迹预测,大脑可以避免迭代,多步心理模拟的成本。人类行为普遍表现出这种时间抽象的特征,但对个体策略及其动态调整的细粒度描述仍然是一个悬而未决的问题。我们开发了一个任务,在动态的、逐个尝试的学习过程中测量SR的使用情况。使用这种方法,我们发现参与者表现出不同个体的SR和基于模型的学习策略的混合。此外,通过动态操纵任务偶然性以支持或不支持时间抽象,我们观察到对SR的资源理性依赖的证据,当未来状态不可预测时,这种依赖会减少。我们的工作增加了越来越多的研究表明,大脑在近似的决策策略之间进行仲裁。目前的研究将这些想法从简单的习惯扩展到更复杂的近似预测模型的使用,并证明个体动态地适应这些模型,以响应其环境的可预测性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Humans rationally balance detailed and temporally abstract world models.

How do people model the world's dynamics to guide mental simulation and evaluate choices? One prominent approach, the Successor Representation (SR), takes advantage of temporal abstraction of future states: by aggregating trajectory predictions over multiple timesteps, the brain can avoid the costs of iterative, multi-step mental simulation. Human behavior broadly shows signatures of such temporal abstraction, but finer-grained characterization of individuals' strategies and their dynamic adjustment remains an open question. We developed a task to measure SR usage during dynamic, trial-by-trial learning. Using this approach, we find that participants exhibit a mix of SR and model-based learning strategies that varies across individuals. Further, by dynamically manipulating the task contingencies within-subject to favor or disfavor temporal abstraction, we observe evidence of resource-rational reliance on the SR, which decreases when future states are less predictable. Our work adds to a growing body of research showing that the brain arbitrates between approximate decision strategies. The current study extends these ideas from simple habits into usage of more sophisticated approximate predictive models, and demonstrates that individuals dynamically adapt these in response to the predictability of their environment.

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