Age-related differences in the social associative learning of trust information

结合属性 联想学习 心理学 认知心理学 数学 纯数学
作者
Kendra Leigh Seaman,Alexander P. Christensen,Katherine D. Senn,Jessica A. Cooper,Brittany S. Cassidy
出处
期刊:Neurobiology of Aging [Elsevier BV]
卷期号:125: 32-40 被引量:4
标识
DOI:10.1016/j.neurobiolaging.2023.01.011
摘要

Trust is a key component of social interaction. Older adults, however, often exhibit excessive trust relative to younger adults. One explanation is that older adults may learn to trust differently than younger adults. Here, we examine how younger (N=33) and older adults (N=30) learn to trust over time. Participants completed a classic iterative trust game with three partners. Younger and older adults shared similar amounts but differed in how they shared money. Compared to younger adults, older adults invested more with untrustworthy partners and less with trustworthy partners. As a group, older adults displayed less learning than younger adults. However, computational modeling suggests that this is not because older adults learn differently from positive and negative feedback than younger adults. Model-based fMRI analyses revealed several age- and learning-related differences in neural processing. Specifically, we found that older learners (N = 19), relative to older non-learners (N = 11), had greater reputation-related activity in mentalizing/memory areas while making their decisions. Collectively, these findings suggest that older adult learners use social cues differently from non-learners.

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