Forgetting
Observational Learning
Interference and Decay
Associative Learning
Neural Circuits
Long-term Potentiation
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Updated: Jan 12, 2026

Measuring Statistical Learning Across Modalities and Domains in School-Aged Children Via an Online Platform and Neuroimaging Techniques
Published on: June 30, 2020
Djohan Bonnet1, Kellian Cottart1, Tifenn Hirtzlin2
1Centre de Nanosciences et de Nanotechnologies, Université Paris-Saclay, CNRS, Palaiseau, France.
We introduce Metaplasticity from Synaptic Uncertainty (MESU), a novel Bayesian learning rule. MESU enables artificial neural networks to learn continuously without forgetting, mimicking biological synapses for robust, perpetual learning.
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