Technische Universität Dresden, Dresden, Germany.
Max Planck Institute for the Physics of Complex Systems, Dresden, Germany.
PLoS One. 2022 Apr 21;17(4):e0267249. doi: 10.1371/journal.pone.0267249. eCollection 2022.
Every day, we make many value-based decisions where we weigh the value of options with other properties, e.g. their time of delivery. In the laboratory, such value-based decision-making is usually studied on a trial by trial basis and each decision is assumed to represent an isolated choice process. Real-life decisions however are usually embedded in a rich context of previous choices at different time scales. A fundamental question is therefore how the dynamics of value-based decision processes unfold on a time scale across several decisions. Indeed, findings from perceptual decision making suggest that sequential decisions patterns might also be present for vale-based decision making. Here, we use a neural-inspired attractor model as an instance of dynamic models from perceptual decision making, as such models incorporate inherent activation dynamics across decisions. We use the model to predict sequential patterns, namely oscillatory switching, perseveration and dependence of perseveration on the delay between decisions. Furthermore, we predict RT effects for specific sequences of trials. We validate the predictions in two new studies and a reanalysis of existing data from a novel decision game in which participants have to perform delay discounting decisions. Applying the validated reasoning to a well-established choice questionnaire, we illustrate and discuss that taking sequential choice patterns into account may be necessary to accurately analyse and model value-based decision processes, especially when considering differences between individuals.
每天,我们都会在权衡选项价值与其他属性(例如交付时间)的基础上做出许多基于价值的决策。在实验室中,这种基于价值的决策通常是在逐个试验的基础上进行研究的,并且每个决策都被假定代表一个孤立的选择过程。然而,现实生活中的决策通常嵌入在不同时间尺度的先前选择的丰富背景中。因此,一个基本问题是基于价值的决策过程的动态如何在几个决策的时间尺度上展开。事实上,来自感知决策的研究结果表明,基于价值的决策也可能存在顺序决策模式。在这里,我们使用神经启发的吸引子模型作为来自感知决策的动态模型的实例,因为这些模型在决策之间包含固有的激活动态。我们使用该模型来预测顺序模式,即振荡切换、持续和持续对决策之间延迟的依赖性。此外,我们预测了特定试验序列的 RT 效应。我们在两项新研究中验证了这些预测,并对一项新决策游戏中的现有数据进行了重新分析,在该游戏中,参与者必须进行延迟折扣决策。将验证后的推理应用于一项成熟的选择问卷,我们说明并讨论了考虑顺序选择模式对于准确分析和建模基于价值的决策过程可能是必要的,尤其是在考虑个体差异时。