TL;DR
This paper proposes a neuron and network model demonstrating that neurons with thousands of synapses can robustly recognize and predict complex sequences, suggesting a universal sequence memory mechanism in neocortex.
Contribution
It introduces a novel neuron model with active dendrites capable of sequence recognition and prediction, extending previous dendritic non-linearity theories.
Findings
Neurons with thousands of synapses can learn hundreds of patterns.
Sequence memory capacity scales linearly with synapse number.
The model is robust across various parameters.
Abstract
Neocortical neurons have thousands of excitatory synapses. It is a mystery how neurons integrate the input from so many synapses and what kind of large-scale network behavior this enables. It has been previously proposed that non-linear properties of dendrites enable neurons to recognize multiple patterns. In this paper we extend this idea by showing that a neuron with several thousand synapses arranged along active dendrites can learn to accurately and robustly recognize hundreds of unique patterns of cellular activity, even in the presence of large amounts of noise and pattern variation. We then propose a neuron model where some of the patterns recognized by a neuron lead to action potentials and define the classic receptive field of the neuron, whereas the majority of the patterns recognized by a neuron act as predictions by slightly depolarizing the neuron without immediately…
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