| Literature DB >> 27314175 |
Jing Wang1, Vladimir L Cherkassky1, Ying Yang1, Kai-Min Kevin Chang2, Robert Vargas1, Nicholas Diana1, Marcel Adam Just1.
Abstract
The generativity and complexity of human thought stem in large part from the ability to represent relations among concepts and form propositions. The current study reveals how a given object such as rabbit is neurally encoded differently and identifiably depending on whether it is an agent ("the rabbit punches the monkey") or a patient ("the monkey punches the rabbit"). Machine-learning classifiers were trained on functional magnetic resonance imaging (fMRI) data evoked by a set of short videos that conveyed agent-verb-patient propositions. When tested on a held-out video, the classifiers were able to reliably identify the thematic role of an object from its associated fMRI activation pattern. Moreover, when trained on one subset of the study participants, classifiers reliably identified the thematic roles in the data of a left-out participant (mean accuracy = .66), indicating that the neural representations of thematic roles were common across individuals.Entities:
Keywords: Functional magnetic resonance imaging; multivariate pattern analysis; propositional representation; thematic roles
Mesh:
Year: 2016 PMID: 27314175 DOI: 10.1080/02643294.2016.1182480
Source DB: PubMed Journal: Cogn Neuropsychol ISSN: 0264-3294 Impact factor: 2.468