DocumentCode
57008
Title
A Spiking Self-Organizing Map Combining STDP, Oscillations, and Continuous Learning
Author
Rumbell, Timothy ; Denham, Susan L. ; Wennekers, T.
Author_Institution
Cognition Inst., Plymouth Univ., Plymouth, UK
Volume
25
Issue
5
fYear
2014
fDate
May-14
Firstpage
894
Lastpage
907
Abstract
The self-organizing map (SOM) is a neural network algorithm to create topographically ordered spatial representations of an input data set using unsupervised learning. The SOM algorithm is inspired by the feature maps found in mammalian cortices but lacks some important functional properties of its biological equivalents. Neurons have no direct access to global information, transmit information through spikes and may be using phasic coding of spike times within synchronized oscillations, receive continuous input from the environment, do not necessarily alter network properties such as learning rate and lateral connectivity throughout training, and learn through relative timing of action potentials across a synaptic connection. In this paper, a network of integrate-and-fire neurons is presented that incorporates solutions to each of these issues through the neuron model and network structure. Results of the simulated experiments assessing map formation using artificial data as well as the Iris and Wisconsin Breast Cancer datasets show that this novel implementation maintains fundamental properties of the conventional SOM, thereby representing a significant step toward further understanding of the self-organizational properties of the brain while providing an additional method for implementing SOMs that can be utilized for future modeling in software or special purpose spiking neuron hardware.
Keywords
data structures; self-organising feature maps; unsupervised learning; SOM algorithm; STDP; Wisconsin breast cancer datasets; artificial data; continuous learning; input data set; integrate-and-fire neuron network; mammalian cortices; network structure; neural network algorithm; phasic coding; spiking neuron hardware; spiking self-organizing map; synchronized oscillations; topographically ordered spatial representations; unsupervised learning; Brain modeling; Encoding; Feedforward neural networks; Mathematical model; Neurons; Oscillators; Training; Artificial neural networks; neural engineering; self-organizing feature maps; unsupervised learning; unsupervised learning.;
fLanguage
English
Journal_Title
Neural Networks and Learning Systems, IEEE Transactions on
Publisher
ieee
ISSN
2162-237X
Type
jour
DOI
10.1109/TNNLS.2013.2283140
Filename
6636061
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