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Fluid Intelligence and the Cross-Frequency Coupling of Neuronal Oscillations

Published online by Cambridge University Press:  06 December 2016

Adam Chuderski*
Affiliation:
Jagiellonian University (Poland)
*
*Correspondence concerning this article should be addressed to Adam Chuderski. Institute of Philosophy. Jagiellonian University. Grodzka, 52. 31–044. Krakow (Poland). E-mail: [email protected]

Abstract

Several existing theoretical models predict that the individual capacity of working memory and abstract reasoning (fluid intelligence) strongly depends on certain features of neuronal oscillations, especially their cross-frequency coupling. Empirical evidence supporting these predictions is still scarce, but it makes the future studies on oscillatory coupling a promising line of research that can uncover the physiological underpinnings of fluid intelligence. Cross-frequency coupling may serve as the optimal level of description of neurocognitive processes, integrating their genetic, structural, neurochemical, and bioelectrical underlying factors with explanations in terms of cognitive operations driven by neuronal oscillations.

Type
Research Article
Copyright
Copyright © Universidad Complutense de Madrid and Colegio Oficial de Psicólogos de Madrid 2016 

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