6
IRUS Total
Downloads
  Altmetric

Accurate and energy-efficient classification with spiking random neural network: corrected and expanded version

File Description SizeFormat 
1906.08864v1.pdfWorking paper306.36 kBAdobe PDFView/Open
Title: Accurate and energy-efficient classification with spiking random neural network: corrected and expanded version
Authors: Hussain, KF
Bassyouni, MY
Gelenbe, E
Item Type: Working Paper
Abstract: Artificial Neural Network (ANN) based techniques have dominated state-of-the-art results in most problems related to computer vision, audio recognition, and natural language processing in the past few years, resulting in strong industrial adoption from all leading technology companies worldwide. One of the major obstacles that have historically delayed large scale adoption of ANNs is the huge computational and power costs associated with training and testing (deploying) them. In the mean-time, Neuromorphic Computing platforms have recently achieved remarkable performance running more bio-realistic Spiking Neural Networks at high throughput and very low power consumption making them a natural alternative to ANNs. Here, we propose using the Random Neural Network (RNN), a spiking neural network with both theoretical and practical appealing properties, as a general purpose classifier that can match the classification power of ANNs on a number of tasks while enjoying all the features of a spiking neural network. This is demonstrated on a number of real-world classification datasets.
Issue Date: 1-Jun-2019
URI: http://hdl.handle.net/10044/1/77707
Publisher: arXiv
Copyright Statement: © 2019 The Author(s)
Keywords: cs.NE
cs.NE
cs.LG
stat.ML
I.2; G.3
cs.NE
cs.NE
cs.LG
stat.ML
I.2; G.3
Publication Status: Published
Appears in Collections:Electrical and Electronic Engineering
Grantham Institute for Climate Change