A Survey of Supervised Learning Models for Spiking Neural Network

Agebure, Moses Apambila and Wumnaya, Paula Aninyie and Baagyere, Edward Yellakuor (2021) A Survey of Supervised Learning Models for Spiking Neural Network. Asian Journal of Research in Computer Science, 9 (4). pp. 35-49. ISSN 2581-8260

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Abstract

There has been a significant attempt to derive supervised learning models for training Spiking Neural Networks (SNN), which is the third and most recent generation of Artificial Neural Network (ANN). Supervised SNN learning models are considered more biologically plausible and thus exploits better the computational efficiency of biological neurons and also, are less computationally expensive than second generation ANN. SNN models have also produced competitive performance in most tasks when compared to second generation ANNs. These advantages, coupled with the difficulty in adopting the well established learning models for second generation networks to train SNN due to the difference in information coding led to the recent introduction of supervised learning models for training SNN.

However, lack of comprehensive source of literature detailing strides made in this area, and the challenges and prospects of SNN serves as a hindrance to further exploration and application of SNN models. A comprehensive review of supervised learning methods in SNN is presented in this paper in which some widely used SNN neural models, learning models and their basic concepts, areas of applications, limitations, prospects and future research directions are discussed. The main contribution of this paper is that it presents and discusses trends in supervised learning in SNN
with the aim of providing a reference point for those desiring further knowledge and application of SNN methods.

Item Type: Article
Subjects: STM Archives > Computer Science
Depositing User: Unnamed user with email support@stmarchives.com
Date Deposited: 03 Mar 2023 10:02
Last Modified: 27 Apr 2024 11:32
URI: http://science.scholarsacademic.com/id/eprint/131

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