Learning and organization of memory for evolving patterns
Oskar H Schnaack, Luca Peliti, Armita Nourmohammad

TL;DR
This paper develops a neural network framework to analyze how biological systems store memory for static versus evolving patterns, revealing that specialized subnetworks are optimal for dynamic pattern recognition.
Contribution
It introduces a generalized energy-based neural network model that explains the limitations of classical distributed memory and proposes compartmentalized networks as optimal for evolving patterns.
Findings
Classical Hopfield networks efficiently encode static patterns.
Distributed networks struggle with evolving patterns due to energy landscape distortion.
Compartmentalized subnetworks are optimal for memory of evolving patterns.
Abstract
Storing memory for molecular recognition is an efficient strategy for responding to external stimuli. Biological processes use different strategies to store memory. In the olfactory cortex, synaptic connections form when stimulated by an odor, and establish distributed memory that can be retrieved upon re-exposure. In contrast, the immune system encodes specialized memory by diverse receptors that recognize a multitude of evolving pathogens. Despite the mechanistic differences between the olfactory and the immune memory, these systems can still be viewed as different information encoding strategies. Here, we present a theoretical framework with artificial neural networks to characterize optimal memory strategies for both static and dynamic (evolving) patterns. Our approach is a generalization of the energy-based Hopfield model in which memory is stored as a network's energy minima. We…
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Taxonomy
TopicsOlfactory and Sensory Function Studies · Neurobiology and Insect Physiology Research · Insect Pheromone Research and Control
