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A Computational Model of Attention Control in Multi-Attribute, Context-Dependent Decision Making

机译:多属性,上下文相关决策中注意力控制的计算模型

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摘要

Real-life decisions often require a comparison of multi-attribute options with various benefits and costs, and the evaluation of each option depends partly on the others in the choice set (i.e., the choice context). Although reinforcement learning models have successfully described choice behavior, how to account for multi-attribute information when making a context-dependent decision remains unclear. Here we develop a computational model of attention control that includes context effects on multi-attribute decisions, linking a context-dependent choice model with a reinforcement learning model. The overall model suggests that the distinctiveness of attributes guides an individual's preferences among multi-attribute options via an attention-control mechanism that determines whether choices are selectively biased toward the most distinctive attribute (selective attention) or proportionally distributed based on the relative distinctiveness of attributes (divided attention). To test the model, we conducted a behavioral experiment in rhesus monkeys, in which they made simple multi-attribute decisions over three conditions that manipulated the degree of distinctiveness between alternatives: (1) four foods of different size and calorie; (2) four pieces of the same food in different colors; and (3) four identical pieces of food. The model simulation of the choice behavior captured the preference bias (i.e., overall preference structure) and the choice persistence (repeated choices) in the empirical data, providing evidence for the respective influences of attention and memory on preference bias and choice persistence. Our study provides insights into computations underlying multi-attribute decisions, linking attentional control to decision-making processes.
机译:现实生活中的决策通常需要将具有多种收益和成本的多属性选项进行比较,并且每个选项的评估部分取决于选择集中的其他选项(即选择上下文)。尽管强化学习模型已经成功地描述了选择行为,但是在做出取决于上下文的决策时如何考虑多属性信息仍然不清楚。在这里,我们开发了注意力控制的计算模型,该模型包括上下文对多属性决策的影响,并将上下文相关的选择模型与强化学习模型链接在一起。总体模型表明,属性的独特性通过注意力控制机制指导个人在多属性选项中的偏好,该机制决定选择是选择性地偏向最独特的属性(选择性注意)还是根据属性的相对独特性按比例分配(注意力分散)。为了测试该模型,我们在恒河猴中进行了一项行为实验,其中他们在三种条件下做出了简单的多属性决策,这些条件操纵了替代方案之间的区别程度:(1)四种大小和卡路里不同的食物; (2)四种相同颜色的食物; (3)四个相同的食物。选择行为的模型仿真捕获了经验数据中的偏好偏差(即整体偏好结构)和选择持久性(重复选择),为注意力和记忆力对偏好偏差和选择持久性的各自影响提供了证据。我们的研究提供了对基于多属性决策的计算的见解,并将注意力控制与决策过程联系在一起。

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