Department of Psychology, Yale University.
Princeton Neuroscience Institute, Princeton University.
Psychol Sci. 2020 Sep;31(9):1183-1190. doi: 10.1177/0956797620948828. Epub 2020 Aug 27.
While navigating the world, we pick up on patterns of where things tend to appear. According to theories of memory and studies of animal behavior, knowledge of these patterns emerges gradually over days or weeks via consolidation of individual navigation episodes. Here, we discovered that navigation patterns can also be extracted on-line, prior to the opportunity for off-line consolidation, as a result of rapid statistical learning. Thirty human participants navigated a virtual water maze in which platform locations were drawn from a spatial distribution. Within a single session, participants increasingly navigated through the mean of the distribution. This behavior was better simulated by random walks from a model that had only an explicit representation of the current mean, compared with a model that had only memory for the individual platform locations. These results suggest that participants rapidly summarized the underlying spatial distribution and used this statistical knowledge to guide future navigation.
在探索世界的过程中,我们会注意到事物出现的模式。根据记忆理论和动物行为研究,这些模式的知识是通过几天或几周的个体导航事件的巩固逐渐形成的。在这里,我们发现,由于快速的统计学习,导航模式也可以在线提取,而无需离线巩固的机会。三十名人类参与者在一个虚拟的水迷宫中导航,其中平台的位置是从空间分布中抽取的。在单个会话中,参与者越来越多地通过分布的平均值进行导航。与仅具有单个平台位置记忆的模型相比,该行为通过从仅具有当前平均值显式表示的模型中进行随机游走来更好地模拟。这些结果表明,参与者迅速总结了潜在的空间分布,并利用这种统计知识来指导未来的导航。