日常活动中的行动选择:机会规划模型

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS ACS Applied Bio Materials Pub Date : 2024-04-24 DOI:10.1111/cogs.13444
Petra Wenzl, Holger Schultheis
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引用次数: 0

摘要

虽然人们在定义明确的领域中的行动选择策略已经得到了相当多的关注,但对于人们在定义不明确的任务中如何选择下一步该做什么却知之甚少。在这篇论文中,我们通过考虑日常任务来揭示这个问题,这些任务在很多情况下有多种可能的解决方案(例如,在摆放桌子时,物品以何种顺序摆放并不重要),因此被归类为定义不明确的问题。即使日常活动中的子任务排序没有硬性约束,我们的研究也表明,人们会表现出特定的偏好。我们认为,这些偏好源于有限理性,即人们的知识和处理能力有限,这就导致人们倾向于尽量减少整体的体力和认知努力。在日常活动中,可以通过以下方式实现这一目标:(a) 将空间环境的属性考虑在内,使其成为自己的优势;(b) 采用逐步优化的行动选择策略。我们提出的机会主义规划模型是一个解释性认知模型,它实现了这些假设,并证明该模型能够泛化到新的日常任务中,在泛化过程中表现优于神经网络等机器学习模型。
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Action Selection in Everyday Activities: The Opportunistic Planning Model

While action selection strategies in well-defined domains have received considerable attention, little is yet known about how people choose what to do next in ill-defined tasks. In this contribution, we shed light on this issue by considering everyday tasks, which in many cases have a multitude of possible solutions (e.g., it does not matter in which order the items are brought to the table when setting a table) and are thus categorized as ill-defined problems. Even if there are no hard constraints on the ordering of subtasks in everyday activities, our research shows that people exhibit specific preferences. We propose that these preferences arise from bounded rationality, that is, people only have limited knowledge and processing power available, which results in a preference to minimize the overall physical and cognitive effort. In the context of everyday activities, this can be achieved by (a) taking properties of the spatial environment into account to use them to one's advantage, and (b) employing a stepwise-optimal action selection strategy. We present the Opportunistic Planning Model as an explanatory cognitive model, which instantiates these assumptions, and show that the model is able to generalize to new everyday tasks, outperforming machine learning models such as neural networks during generalization.

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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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