wie sich unser mentales lexikon im verlauf des lebens ......wie sich unser mentales lexikon im...
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Wie sich unser mentales Lexikon im Verlauf des Lebens entwickelt
Rui Mata // Universität Basel
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Die Gedanken sind frei, wer kann sie erraten, sie fliegen vorbei wie nächtliche Schatten. Kein Mensch kann sie wissen, kein Jäger erschießen mit Pulver und Blei: Die Gedanken sind frei!
Eine (sehr) kurze Geschichte der
Sprachforschung!
18831861
Neuropsychologie und Psychometrie
Paul Broca Francis Galton
1874
Carl Wernicke
“Wir stellen fest, dass unser Ideenpool eng begrenzt ist und dass der Verstand bei der Durchführung seiner Operationen ständig zu den gleichen Instrumenten zurückkehrt, weshalb seine Wege notwendigerweise festgelegter sind und seine Flexibilität mit zunehmendem Alter abnimmt."
Linguistik und Kognitive Psychologie
1959
Noam Chomsky
Elizabeth Loftus
1975
1986
Universalgrammatik
David Rumelhart
James McClelland
Collins & Loftus Psychological Review
2017
Kognitive Neurowissenschaften
Lambon Ralph et al. Nat Rev Neuro
2007
Hickok & Poeppel, Nat Rev Neuro
Wie sich unser mentales Lexikon im Verlauf des Lebens entwickelt
Wortschatztest
Wie sich unser mentales Lexikon im Verlauf des Lebens entwickelt
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d = M1-M2
s
d = Effektgröße für Mittelwertunterschiede zwischen zwei Gruppen
Wie sich unser mentales Lexikon im Verlauf des Lebens entwickelt
Verhaeghen, P. (2003). Aging and vocabulary score: A meta-analysis. Psychology and Aging, 18(2), 332–339. http://doi.org/10.1037/0882-7974.18.2.332
d = .80
Young
Older
Wie sich unser mentales Lexikon im Verlauf des Lebens entwickelt
Hoffman, P., & Morcom, A. M. (2018). Age-related changes in the neural networks supporting semantic cognition: A meta-analysis of 47 functional neuroimaging studies. Neuroscience & Biobehavioral Reviews, 84, 134–150. http://doi.org/10.1016/j.neubiorev.2017.11.010
Links Rechts
Wie sich unser mentales Lexikon im Verlauf des Lebens entwickelt
Symposium on the Aging Lexicon, 7-9 Juni 2018
Wulff, De Deyne, Jones, Mata, and the Aging Lexicon Consortium (2019). New Perspectives on the Aging Lexicon. https://doi.org/10.31234/osf.io/envsu
Johann Jakob Spreng (1699-1768)
Bild: Universität Basel, Florian Moritz
Grosse Glossarium der deutschen Sprache
Wie sich unser mentales Lexikon im Verlauf des Lebens entwickelt
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Wulff, De Deyne, Jones, Mata, and the Aging Lexicon Consortium (2019). New Perspectives on the Aging Lexicon. https://doi.org/10.31234/osf.io/envsu
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Netzwerk Grosse
Grad (Degree)
MY
Buckner, R. L. (2004). Memory and Executive Function in Aging and AD. Neuron, 44(1), 195–208. http://doi.org/10.1016/j.neuron.2004.09.006
Small World of Words (SWOW) mySWOW
Diagnostische InstrumenteAging Lexicon Consortium
Wie sich unser mentales Lexikon im Verlauf des Lebens entwickelt
Rui Mata // Universität Basel
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