6533b82cfe1ef96bd1290045
RESEARCH PRODUCT
Lexical prediction via forward models: N400 evidence from German Sign Language
Markus SteinbachAnnika HerrmannIna Bornkessel-schlesewskyMatthias SchlesewskyJana Hosemannsubject
AdultMaleAdolescentForward modelCognitive NeuroscienceRealization (linguistics)German Sign LanguageExperimental and Cognitive PsychologySign language050105 experimental psychologyLate positivitySign Language03 medical and health sciencesBehavioral Neuroscience0302 clinical medicineGermanyHumansN4000501 psychology and cognitive sciencesSign languageSet (psychology)Evoked PotentialsLanguageLanguage productionLanguage comprehension05 social sciencesBrainElectroencephalographyMiddle AgedLinguisticslanguage.human_languageN400ComprehensionlanguageFemaleComprehensionPsychology030217 neurology & neurosurgeryEvent-related potentialsCognitive psychologySign (mathematics)description
Models of language processing in the human brain often emphasize the prediction of upcoming input for example in order to explain the rapidity of language understanding. However,the precise mechanisms of prediction are still poorly understood. Forward models,which draw upon the language production system to setup expectations during comprehension, provide a promising approach in this regard. Here, we present an event- related potential (ERP) study on German Sign Language (DGS) which tested the hypotheses of a forward model perspective on prediction. Sign languages involve relatively long transition phases between one sign and the next, which should be anticipated as part of a forward model-based prediction even though they are semantically empty. Native speakers of DGS watched videos of naturally signed DGS sentences which either ended with an expected or a (semantically) unexpected sign. Unexpected signs engendered a biphasic N400-late positivity pattern. Crucially, N400 onset preceded critical sign onset and was thus clearly elicited by properties of the transition phase. The comprehension system there by clearly anticipated modality-specific information about the realization of the predicted semantic item. These results provide strong converging support for the application of forward models in language comprehension. Refereed/Peer-reviewed
year | journal | country | edition | language |
---|---|---|---|---|
2013-09-01 | Neuropsychologia |