Coupled Hebbian learning and evolutionary dynamics in a formal model for structural synaptic plasticity
Harold P. de Vladar, E\"ors Szathm\'ary

TL;DR
This paper presents a formal model combining Hebbian learning, evolutionary dynamics, and structural synaptic plasticity to explain rapid problem-solving and network reorganization in neural systems.
Contribution
It introduces a novel integration of parallel solution evaluation, structural plasticity, and evolutionary models to enhance understanding of neural learning mechanisms.
Findings
Parallel solution generation accelerates problem-solving.
Structural plasticity leads to convergence in network topologies.
Synaptic costs influence connectivity and synapse lifetime.
Abstract
Theoretical models of neuronal function consider different mechanisms through which networks learn, classify and discern inputs. A central focus of these models is to understand how associations are established amongst neurons, in order to predict spiking patterns that are compatible with empirical observations. Although these models have led to major insights and advances, they still do not account for the astonishing velocity with which the brain solves certain problems and what lies behind its creativity, amongst others features. We examine two important components that may crucially aid comprehensive understanding of said neurodynamical processes. First, we argue that once presented with a problem, different putative solutions are generated in parallel by different groups or local neuronal complexes, with the subsequent stabilization and spread of the best solutions. Using…
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Taxonomy
TopicsNeural dynamics and brain function · Advanced Memory and Neural Computing · Neuroscience and Neuropharmacology Research
