PsychologyNature Communications
Neural heterogeneity promotes robust learning
N. Perez-nieves, V. C. H. Leung, et al.
This groundbreaking research conducted by Nicolas Perez-Nieves, Vincent C. H. Leung, Pier Luigi Dragotti, and Dan F. M. Goodman reveals how neural heterogeneity in the brain enhances learning performance, stability, and adaptability. Their work demonstrates that diversity in neuronal time constants plays a critical role, particularly for complex temporal tasks.
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