| Literature DB >> 27130661 |
Tyler Davis1, Micah Goldwater2, Josue Giron2.
Abstract
The ability to form relational categories for objects that share few features in common is a hallmark of human cognition. For example, anything that can play a preventative role, from a boulder to poverty, can be a "barrier." However, neurobiological research has focused solely on how people acquire categories defined by features. The present functional magnetic resonance imaging study examines how relational and feature-based category learning compare in well-matched learning tasks. Using a computational model-based approach, we observed a cluster in left rostrolateral prefrontal cortex (rlPFC) that tracked quantitative predictions for the representational distance between test and training examples during relational categorization. Contrastingly, medial and dorsal PFC exhibited graded activation that tracked decision evidence during both feature-based and relational categorization. The results suggest that rlPFC computes an alignment signal that is critical for integrating novel examples during relational categorization whereas other PFC regions support more general decision functions.Entities:
Keywords: category learning; entropy; reasoning; representational distance; same–different learning
Mesh:
Year: 2017 PMID: 27130661 DOI: 10.1093/cercor/bhw099
Source DB: PubMed Journal: Cereb Cortex ISSN: 1047-3211 Impact factor: 5.357