An Operating Principle of the Cerebral Cortex, and a Cellular Mechanism for Attentional Trial-and-Error Pattern Learning and Useful Classification Extraction
Marat M. Rvachev

TL;DR
This paper proposes a cellular mechanism for attentional trial-and-error learning and classification in the cerebral cortex, extending previous hypotheses with biophysical plausibility and hierarchical learning capabilities.
Contribution
It introduces a revised model of pyramidal neuron plasticity, incorporating behavioral time scale plasticity and voluntary/involuntary attentional mechanisms.
Findings
Modified synaptic plasticity rules aligned with BTSP
Neurons can classify inputs hierarchically without conscious control
Burst firing can be involuntary, driven by attention to stimuli
Abstract
A feature of the brains of intelligent animals is the ability to learn to respond to an ensemble of active neuronal inputs with a behaviorally appropriate ensemble of active neuronal outputs. Previously, a hypothesis was proposed on how this mechanism is implemented at the cellular level within the neocortical pyramidal neuron: the apical tuft or perisomatic inputs initiate "guess" neuron firings, while the basal dendrites identify input patterns based on excited synaptic clusters, with the cluster excitation strength adjusted based on reward feedback. This simple mechanism allows neurons to learn to classify their inputs in a surprisingly intelligent manner. Here, we revise and extend this hypothesis. We modify synaptic plasticity rules to align with behavioral time scale synaptic plasticity (BTSP) observed in hippocampal area CA1, making the framework more biophysically and…
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Taxonomy
TopicsNeural dynamics and brain function · Neuroscience and Neuropharmacology Research · Neuroscience and Neural Engineering
MethodsAttentive Walk-Aggregating Graph Neural Network · ALIGN
