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Hierarchical anti-Hebbian network model for the formation of spatial cells in 3D (Soman et al 2019)
 
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Model Information
Model File
Citations
Accession:
260210
This model shows how spatial representations in 3D space could emerge using unsupervised neural networks. Model is a hierarchical one which means that it has multiple layers, where each layer has got a specific function to achieve. This architecture is more of a generalised one i.e. it gives rise to different kinds of spatial representations after training.
Reference:
1 .
Soman K, Chakravarthy S, Yartsev MM (2018) A hierarchical anti-Hebbian network model for the formation of spatial cells in three-dimensional space.
Nat Commun
9
:4046
[
PubMed
]
Model Information
(Click on a link to find other models with that property)
Model Type:
Connectionist Network;
Brain Region(s)/Organism:
Hippocampus;
Entorhinal cortex;
Cell Type(s):
Abstract rate-based neuron;
Channel(s):
Gap Junctions:
Receptor(s):
Gene(s):
Transmitter(s):
Simulation Environment:
MATLAB;
Model Concept(s):
Spatial Navigation;
Learning;
Unsupervised Learning;
Implementer(s):
Soman, Karthik [karthi.soman at gmail.com];
Download the displayed file
/
SomanEtAl2018
images
readme.html
borderCoverage.m
borderScore.m
bs_compute.m
correlation_map.m
correlation_map3d.m
ellipsoid_opt_fit.m
elongation_index.mat
extractSlice.m
FCC score of grid neurons.mat
fcc_gscore.m
fcc_score_fn.m
foldiak_linear_fn.m
gridscore.m
lahn_wt_1.mat
lahn_wt_10.mat
lahn_wt_11.mat
*
Other models using lahn_wt_11.mat:
Hierarchical anti-Hebbian network model for the formation of spatial cells in 3D (Soman et al 2019)
lahn_wt_12.mat
lahn_wt_2.mat
lahn_wt_3.mat
lahn_wt_4.mat
lahn_wt_5.mat
*
Other models using lahn_wt_5.mat:
Hierarchical anti-Hebbian network model for the formation of spatial cells in 3D (Soman et al 2019)
lahn_wt_6.mat
*
Other models using lahn_wt_6.mat:
Hierarchical anti-Hebbian network model for the formation of spatial cells in 3D (Soman et al 2019)
lahn_wt_7.mat
lahn_wt_8.mat
*
Other models using lahn_wt_8.mat:
Hierarchical anti-Hebbian network model for the formation of spatial cells in 3D (Soman et al 2019)
lahn_wt_9.mat
main_code.m
model_code.m
pca_own.m
*
Other models using pca_own.m:
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pointCorr.m
removemean.m
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squaregridscore.m
trj_1.mat
trj_2.mat
trj_3.mat
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