posted on 2019-11-08, 09:26authored byAboozar Taherkhani, Ammar Belatreche, Yuhua Li, Georgina CosmaGeorgina Cosma, Liam P Maguire, TM McGinnity
Artificial neural networks have been used as a powerful processing tool in various areas such as pattern
recognition, control, robotics, and bioinformatics. Their wide applicability has encouraged researchers to improve
artificial neural networks by investigating the biological brain. Neurological research has significantly progressed
in recent years and continues to reveal new characteristics of biological neurons. New technologies can now
capture temporal changes in the internal activity of the brain in more detail and help clarify the relationship
between brain activity and the perception of a given stimulus. This new knowledge has led to a new type of
artificial neural network, the Spiking Neural Network (SNN), that draws more faithfully on biological properties
to provide higher processing abilities. A review of recent developments in learning of spiking neurons is presented
in this paper. First the biological background of SNN learning algorithms is reviewed. The important elements of
a learning algorithm such as the neuron model, synaptic plasticity, information encoding and SNN topologies are
then presented. Then, a critical review of the state-of-the-art learning algorithms for SNNs using single and
multiple spikes is presented. Additionally, deep spiking neural networks are reviewed, and challenges and
opportunities in the SNN field are discussed.
Funding
The Leverhulme Trust (Research Project Grant No: RPG-2016-252, Title: Novel Approaches for Constructing Optimised Multimodal Data Spaces).
This paper was accepted for publication in the journal Neural Networks and the definitive published version is available at https://doi.org/10.1016/j.neunet.2019.09.036