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Assembly-based computations through contextual dendritic gating of plasticity

Authors: Sebastian Onasch, Christoph Miehl, M. Maurycy Miękus, Julijana Gjorgjieva

Presentation type: Talk at SNUFA 2025 online workshop (5-6 Nov 2025)

Abstract

Neuronal assemblies – groups of strongly connected neurons – are considered the basic building blocks of perception and memory in the brain by encoding representations of specific concepts. Despite recent evidence for the biological basis behind the existence and formation of such assemblies, computational models often fall short of showing how assemblies can be flexibly learned and combined to perform real-world computations. A prominent problem is ‘catastrophic forgetting’, where learning a new assembly can disrupt existing connectivity structure and lead to forgetting previously learned assemblies. We propose a biologically plausible computational model, where dendritic compartments (instead of neurons) are the loci for learning and inhibition gates learning in a dendrite-specific manner, to flexibly learn new stimuli without forgetting old ones. By learning stable projections from one brain region to another and associations between different brain regions, we demonstrate how the proposed assembly framework implements the basic building blocks for diverse computations. In a visual-auditory association task, we demonstrate how the context-specific assembly computations can be used to correctly separate ambiguous stimuli based on their dendritic representations. Our models provide unique insights and predictions for how hierarchically connected brain areas use biological components to implement flexible yet robust learning.