Cognitive Neuroscience Theories of Intelligence

Network neuroscience research into intelligence has emphasized two primary neurobiological mechanisms that underlie cognitive ability: the flexible, dynamic integration of multiple brain networks during information processing, and the topology and connectivity of highly-connected hub nodes that drive or coordinate network reconfiguration. Several cognitive neuroscience theories of intelligence appeal to these properties when drawing on neuroscience evidence to explain individual di ff erences in cognitive ability. In this chapter, we review

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