Neural alignment of knowledge structures relates to human intelligence

preprint OA: closed CC-BY-NC-ND-4.0

Abstract

Human general intelligence reflects stable performance correlations across diverse cognitive tasks and predicts major life outcomes. However, the relevant neural information processing mechanisms remain unclear. Structure mapping — the alignment of novel problems onto the relational structure of prior knowledge — has been proposed as a core principle in human reasoning. Combining time-resolved neural geometry analyses of task-based fMRI data with cognitive testing in a large sample, we demonstrate structural alignment of newly learned relations to preexisting knowledge representations in parietal cortex. Interindividual differences in neural alignment supported learning and reasoning and, beyond the task level, predicted the latent factor fluid intelligence. These findings provide first neural evidence that the computational principle of structure mapping contributes to individual differences in intelligence.
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Abstract Human general intelligence reflects stable performance correlations across diverse cognitive tasks and predicts major life outcomes. However, the relevant neural information processing mechanisms remain unclear. Structure mapping — the alignment of novel problems onto the relational structure of prior knowledge — has been proposed as a core principle in human reasoning. Combining time-resolved neural geometry analyses of task-based fMRI data with cognitive testing in a large sample, we demonstrate structural alignment of newly learned relations to preexisting knowledge representations in parietal cortex. Interindividual differences in neural alignment supported learning and reasoning and, beyond the task level, predicted the latent factor fluid intelligence. These findings provide first neural evidence that the computational principle of structure mapping contributes to individual differences in intelligence. Competing Interest Statement The authors have declared no competing interest.

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europepmc
last seen: 2026-05-20T01:45:00.602351+00:00
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License: CC-BY-NC-ND-4.0