Division of Humanities and Social Sciences, California Institute of Technology, Pasadena, CA, USA.
Department of Psychology & Brain and Behavior Institute, University of Maryland, College Park, MD, USA.
Nat Commun. 2024 May 24;15(1):4436. doi: 10.1038/s41467-024-48548-y.
To navigate our complex social world, it is crucial to deploy multiple learning strategies, such as learning from directly experiencing action outcomes or from observing other people's behavior. Despite the prevalence of experiential and observational learning in humans and other social animals, it remains unclear how people favor one strategy over the other depending on the environment, and how individuals vary in their strategy use. Here, we describe an arbitration mechanism in which the prediction errors associated with each learning strategy influence their weight over behavior. We designed an online behavioral task to test our computational model, and found that while a substantial proportion of participants relied on the proposed arbitration mechanism, there was some meaningful heterogeneity in how people solved this task. Four other groups were identified: those who used a fixed mixture between the two strategies, those who relied on a single strategy and non-learners with irrelevant strategies. Furthermore, groups were found to differ on key behavioral signatures, and on transdiagnostic symptom dimensions, in particular autism traits and anxiety. Together, these results demonstrate how large heterogeneous datasets and computational methods can be leveraged to better characterize individual differences.
为了在复杂的社会世界中导航,部署多种学习策略至关重要,例如从直接体验行动结果或观察他人行为中学习。尽管经验学习和观察学习在人类和其他社会动物中普遍存在,但人们如何根据环境偏好一种策略而不是另一种策略,以及个体在策略使用上的差异如何,仍然不清楚。在这里,我们描述了一种仲裁机制,其中与每种学习策略相关的预测误差会影响其对行为的权重。我们设计了一个在线行为任务来测试我们的计算模型,结果发现,虽然很大一部分参与者依赖于所提出的仲裁机制,但人们解决这个任务的方式存在一些有意义的差异。确定了另外四个组:那些在两种策略之间使用固定混合的人,那些依赖单一策略的人和使用不相关策略的非学习者。此外,还发现各组在关键行为特征和跨诊断症状维度上存在差异,特别是自闭症特征和焦虑。总之,这些结果表明如何利用大型异构数据集和计算方法来更好地描述个体差异。