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2016 ; 5
(ä): ä Nephropedia Template TP
gab.com Text
Twit Text FOAVip
Twit Text #
English Wikipedia
Continuous Attractor Neural Networks: Candidate of a Canonical Model for Neural
Information Representation
#MMPMID26937278
Wu S
; Wong KY
; Fung CC
; Mi Y
; Zhang W
F1000Res
2016[]; 5
(ä): ä PMID26937278
show ga
Owing to its many computationally desirable properties, the model of continuous
attractor neural networks (CANNs) has been successfully applied to describe the
encoding of simple continuous features in neural systems, such as orientation,
moving direction, head direction, and spatial location of objects. Recent
experimental and computational studies revealed that complex features of external
inputs may also be encoded by low-dimensional CANNs embedded in the
high-dimensional space of neural population activity. The new experimental data
also confirmed the existence of the M-shaped correlation between neuronal
responses, which is a correlation structure associated with the unique dynamics
of CANNs. This body of evidence, which is reviewed in this report, suggests that
CANNs may serve as a canonical model for neural information representation.