Polynomial Based Functional Link Artificial Recurrent Neural Network adaptive System for predicting Indian Stocks

A low complexity Polynomial Functional link Artificial Recurrent Neural Network (PFLARNN) has been proposed for the prediction of financial time series data. Although different types of polynomial functions have been used for low complexity neural network architectures earlier for stock market predi...

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Main Authors: D. K. Bebarta, Birendra Biswal, P. K. Dash
Format: Article
Language:English
Published: Atlantis Press 2015-12-01
Series:International Journal of Computational Intelligence Systems
Subjects:
Online Access:https://www.atlantis-press.com/article/25868645.pdf
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spelling doaj-70a5d0afe68b43b8bbe67cde22a0c6fd2020-11-25T01:46:21ZengAtlantis PressInternational Journal of Computational Intelligence Systems 1875-68832015-12-018610.1080/18756891.2015.1099910Polynomial Based Functional Link Artificial Recurrent Neural Network adaptive System for predicting Indian StocksD. K. BebartaBirendra BiswalP. K. DashA low complexity Polynomial Functional link Artificial Recurrent Neural Network (PFLARNN) has been proposed for the prediction of financial time series data. Although different types of polynomial functions have been used for low complexity neural network architectures earlier for stock market prediction, a comparative study is needed to choose the optimal combinations of the nonlinear functions for a reasonably accurate forecast. Further a recurrent version of the Functional link neural network is used to model more accurately a chaotic time series like stock market indices with a lesser number of nonlinear basis functions. The proposed PFLARNN model when trained with the well known gradient descent algorithm produces reasonable accuracy with a choice of range of weight parameters of the network. However, to improve the accuracy of the forecast further, the weight parameters of the recurrent functional neural network are optimized using an evolutionary learning algorithm like the differential evolution (DE). A comparison with other well known neural architectures shows that the proposed low complexity neural model can provide significant prediction accuracy for one day advance and speed of convergence using the International Business Machines Corp. (IBM) stock market indices.https://www.atlantis-press.com/article/25868645.pdfPFLARNNPolynomial functionsbackpropagation learning algorithmdifferential evolutionIBM stock indicesMAPE
collection DOAJ
language English
format Article
sources DOAJ
author D. K. Bebarta
Birendra Biswal
P. K. Dash
spellingShingle D. K. Bebarta
Birendra Biswal
P. K. Dash
Polynomial Based Functional Link Artificial Recurrent Neural Network adaptive System for predicting Indian Stocks
International Journal of Computational Intelligence Systems
PFLARNN
Polynomial functions
backpropagation learning algorithm
differential evolution
IBM stock indices
MAPE
author_facet D. K. Bebarta
Birendra Biswal
P. K. Dash
author_sort D. K. Bebarta
title Polynomial Based Functional Link Artificial Recurrent Neural Network adaptive System for predicting Indian Stocks
title_short Polynomial Based Functional Link Artificial Recurrent Neural Network adaptive System for predicting Indian Stocks
title_full Polynomial Based Functional Link Artificial Recurrent Neural Network adaptive System for predicting Indian Stocks
title_fullStr Polynomial Based Functional Link Artificial Recurrent Neural Network adaptive System for predicting Indian Stocks
title_full_unstemmed Polynomial Based Functional Link Artificial Recurrent Neural Network adaptive System for predicting Indian Stocks
title_sort polynomial based functional link artificial recurrent neural network adaptive system for predicting indian stocks
publisher Atlantis Press
series International Journal of Computational Intelligence Systems
issn 1875-6883
publishDate 2015-12-01
description A low complexity Polynomial Functional link Artificial Recurrent Neural Network (PFLARNN) has been proposed for the prediction of financial time series data. Although different types of polynomial functions have been used for low complexity neural network architectures earlier for stock market prediction, a comparative study is needed to choose the optimal combinations of the nonlinear functions for a reasonably accurate forecast. Further a recurrent version of the Functional link neural network is used to model more accurately a chaotic time series like stock market indices with a lesser number of nonlinear basis functions. The proposed PFLARNN model when trained with the well known gradient descent algorithm produces reasonable accuracy with a choice of range of weight parameters of the network. However, to improve the accuracy of the forecast further, the weight parameters of the recurrent functional neural network are optimized using an evolutionary learning algorithm like the differential evolution (DE). A comparison with other well known neural architectures shows that the proposed low complexity neural model can provide significant prediction accuracy for one day advance and speed of convergence using the International Business Machines Corp. (IBM) stock market indices.
topic PFLARNN
Polynomial functions
backpropagation learning algorithm
differential evolution
IBM stock indices
MAPE
url https://www.atlantis-press.com/article/25868645.pdf
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