Forgetting leads to chaos in attractor networks
Ulises Pereira-Obilinovic, Johnatan Aljadeff, Nicolas Brunel

TL;DR
This paper investigates how forgetting in attractor networks leads to a mix of fixed-point and chaotic memory retrieval states, explaining observed cortical activity variability during memory tasks.
Contribution
It introduces a model with continuous learning and forgetting, revealing age-dependent retrieval dynamics and developing a dynamical mean field theory to analyze these effects.
Findings
Recent memories are retrieved as fixed points.
Older memories exhibit chaotic, fluctuating dynamics.
Memory states transition from fixed-point to chaotic with age.
Abstract
Attractor networks are an influential theory for memory storage in brain systems. This theory has recently been challenged by the observation of strong temporal variability in neuronal recordings during memory tasks. In this work, we study a sparsely connected attractor network where memories are learned according to a Hebbian synaptic plasticity rule. After recapitulating known results for the continuous, sparsely connected Hopfield model, we investigate a model in which new memories are learned continuously and old memories are forgotten, using an online synaptic plasticity rule. We show that for a forgetting time scale that optimizes storage capacity, the qualitative features of the network's memory retrieval dynamics are age-dependent: most recent memories are retrieved as fixed-point attractors while older memories are retrieved as chaotic attractors characterized by strong…
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Taxonomy
TopicsNeural Networks and Applications · Neural dynamics and brain function · Advanced Memory and Neural Computing
