Title
SpikeComp: An Evolving Spiking Neural Network with Adaptive Compact Structure for Pattern Classification.
Abstract
This paper presents a new supervised learning algorithm SpikeComp with an adaptive compact structure for Spiking Neural Networks SNNs. SpikeComp consists of two layers of spiking neurons: an encoding layer which temporally encodes real valued features into spatio-temporal spike patterns, and an output layer of dynamically grown neurons which perform spatio-temporal pattern classification. The weights between the neurons in the encoding layer and the new added neuron in the output layer are initialised based on the precise spiking times in the encoding layer. New strategies are proposed to either add a new neuron, or update the network parameters when a new sample is presented to the network. The proposed learning algorithm was demonstrated on several benchmark classification datasets and the obtained results show that SpikeComp can perform pattern classification with a comparable performance and a much compact network structure compared with other existing SNN training algorithm.
Year
DOI
Venue
2015
10.1007/978-3-319-26535-3_30
ICONIP
Keywords
Field
DocType
Spiking neurons,Supervised learning,Adaptive structure,Classification
Pattern recognition,Random neural network,Computer science,Supervised learning,Supervised training,Artificial intelligence,Spiking neural network,Machine learning,Encoding (memory),Network structure
Conference
Volume
ISSN
Citations 
9490
0302-9743
2
PageRank 
References 
Authors
0.39
1
4
Name
Order
Citations
PageRank
Jinling Wang1452.59
Ammar Belatreche225623.11
Liam P. Maguire351151.18
T. Martin Mcginnity451866.30