Financial time series prediction using spiking neural networks.
In this paper a novel application of a particular type of spiking neural network, a Polychronous Spiking Network, was used for financial time series prediction. It is argued that the inherent temporal capabilities of this type of network are suited to non-stationary data such as this. The performanc...
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2014-01-01
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doaj-64d9130f3f0c4b0e9b6800ffd9c5f3912020-11-24T21:50:07ZengPublic Library of Science (PLoS)PLoS ONE1932-62032014-01-0198e10365610.1371/journal.pone.0103656Financial time series prediction using spiking neural networks.David ReidAbir Jaafar HussainHissam TawfikIn this paper a novel application of a particular type of spiking neural network, a Polychronous Spiking Network, was used for financial time series prediction. It is argued that the inherent temporal capabilities of this type of network are suited to non-stationary data such as this. The performance of the spiking neural network was benchmarked against three systems: two "traditional", rate-encoded, neural networks; a Multi-Layer Perceptron neural network and a Dynamic Ridge Polynomial neural network, and a standard Linear Predictor Coefficients model. For this comparison three non-stationary and noisy time series were used: IBM stock data; US/Euro exchange rate data, and the price of Brent crude oil. The experiments demonstrated favourable prediction results for the Spiking Neural Network in terms of Annualised Return and prediction error for 5-Step ahead predictions. These results were also supported by other relevant metrics such as Maximum Drawdown and Signal-To-Noise ratio. This work demonstrated the applicability of the Polychronous Spiking Network to financial data forecasting and this in turn indicates the potential of using such networks over traditional systems in difficult to manage non-stationary environments.http://europepmc.org/articles/PMC4149346?pdf=render |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
David Reid Abir Jaafar Hussain Hissam Tawfik |
spellingShingle |
David Reid Abir Jaafar Hussain Hissam Tawfik Financial time series prediction using spiking neural networks. PLoS ONE |
author_facet |
David Reid Abir Jaafar Hussain Hissam Tawfik |
author_sort |
David Reid |
title |
Financial time series prediction using spiking neural networks. |
title_short |
Financial time series prediction using spiking neural networks. |
title_full |
Financial time series prediction using spiking neural networks. |
title_fullStr |
Financial time series prediction using spiking neural networks. |
title_full_unstemmed |
Financial time series prediction using spiking neural networks. |
title_sort |
financial time series prediction using spiking neural networks. |
publisher |
Public Library of Science (PLoS) |
series |
PLoS ONE |
issn |
1932-6203 |
publishDate |
2014-01-01 |
description |
In this paper a novel application of a particular type of spiking neural network, a Polychronous Spiking Network, was used for financial time series prediction. It is argued that the inherent temporal capabilities of this type of network are suited to non-stationary data such as this. The performance of the spiking neural network was benchmarked against three systems: two "traditional", rate-encoded, neural networks; a Multi-Layer Perceptron neural network and a Dynamic Ridge Polynomial neural network, and a standard Linear Predictor Coefficients model. For this comparison three non-stationary and noisy time series were used: IBM stock data; US/Euro exchange rate data, and the price of Brent crude oil. The experiments demonstrated favourable prediction results for the Spiking Neural Network in terms of Annualised Return and prediction error for 5-Step ahead predictions. These results were also supported by other relevant metrics such as Maximum Drawdown and Signal-To-Noise ratio. This work demonstrated the applicability of the Polychronous Spiking Network to financial data forecasting and this in turn indicates the potential of using such networks over traditional systems in difficult to manage non-stationary environments. |
url |
http://europepmc.org/articles/PMC4149346?pdf=render |
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