A general learning system based on neuron bursting and tonic firing
Hin Wai Lui

TL;DR
This paper presents a biologically inspired learning framework based on neuron bursting and tonic firing modes, explaining perception, memory, and attention mechanisms, and compares it to deep learning algorithms.
Contribution
It introduces a novel learning system that models neuron firing patterns and synchrony ensembles as a basis for perception and memory, bridging neuroscience and machine learning.
Findings
Neuron bursting codes for high-level perceptual abstraction.
Synchrony ensembles bind related percepts and compete for attention.
Memory transfer occurs via synaptic plasticity during sleep.
Abstract
This paper proposes a framework for the biological learning mechanism as a general learning system. The proposal is as follows. The bursting and tonic modes of firing patterns found in many neuron types in the brain correspond to two separate modes of information processing, with one mode resulting in awareness, and another mode being subliminal. In such a coding scheme, a neuron in bursting state codes for the highest level of perceptual abstraction representing a pattern of sensory stimuli, or volitional abstraction representing a pattern of muscle contraction sequences. Within the 50-250 ms minimum integration time of experience, the bursting neurons form synchrony ensembles to allow for binding of related percepts. The degree which different bursting neurons can be merged into the same synchrony ensemble depends on the underlying cortical connections that represent the degree of…
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