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通过程序生成探索人类计划的层次结构。

Exploring the hierarchical structure of human plans via program generation.

作者信息

Correa Carlos G, Sanborn Sophia, Ho Mark K, Callaway Frederick, Daw Nathaniel D, Griffiths Thomas L

机构信息

Princeton Neuroscience Institute, Princeton University, USA.

Department of Ophthalmology, Stanford University, USA.

出版信息

Cognition. 2025 Feb;255:105990. doi: 10.1016/j.cognition.2024.105990. Epub 2024 Nov 30.

Abstract

Human behavior is often assumed to be hierarchically structured, made up of abstract actions that can be decomposed into concrete actions. However, behavior is typically measured as a sequence of actions, which makes it difficult to infer its hierarchical structure. In this paper, we explore how people form hierarchically structured plans, using an experimental paradigm with observable hierarchical representations: participants create programs that produce sequences of actions in a language with explicit hierarchical structure. This task lets us test two well-established principles of human behavior: utility maximization (i.e. using fewer actions) and minimum description length (MDL; i.e. having a shorter program). We find that humans are sensitive to both metrics, but that both accounts fail to predict a qualitative feature of human-created programs, namely that people prefer programs with reuse over and above the predictions of MDL. We formalize this preference for reuse by extending the MDL account into a generative model over programs, modeling hierarchy choice as the induction of a grammar over actions. Our account can explain the preference for reuse and provides better predictions of human behavior, going beyond simple accounts of compressibility to highlight a principle that guides hierarchical planning.

摘要

人类行为通常被假定为具有层次结构,由可分解为具体行动的抽象行动组成。然而,行为通常被测量为一系列行动,这使得推断其层次结构变得困难。在本文中,我们使用具有可观察层次表示的实验范式来探索人们如何形成层次结构化的计划:参与者创建程序,这些程序使用具有明确层次结构的语言生成行动序列。这项任务使我们能够测试两个既定的人类行为原则:效用最大化(即使用更少的行动)和最小描述长度(MDL;即拥有更短的程序)。我们发现人类对这两个指标都很敏感,但这两种解释都无法预测人类创建的程序的一个定性特征,即人们更喜欢具有重用性的程序,其程度超过了MDL的预测。我们通过将MDL解释扩展为程序上的生成模型,将层次选择建模为行动上语法的归纳,从而将这种对重用的偏好形式化。我们的解释可以解释对重用的偏好,并能对人类行为做出更好的预测,超越了简单的可压缩性解释,突出了一个指导层次规划的原则。

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