Advantages of direct input-to-output connections in neural networks : the Elman network for stock index forecasting

The Elman neural network (ElmanNN) is well-known for its capability of processing dynamic information, which has led to successful applications in stock forecasting. In this paper, we introduce direct input-to-output connections (DIOCs) into the ElmanNN and show that the proposed Elman neural networ...

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Main Authors: Wang, Yaoli, Wang, Lipo, Yang, Fangjun, Di, Wenxia, Chang, Qing
其他作者: School of Electrical and Electronic Engineering
格式: Article
語言:English
出版: 2021
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在線閱讀:https://hdl.handle.net/10356/154501
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機構: Nanyang Technological University
語言: English
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spelling sg-ntu-dr.10356-1545012021-12-23T08:05:41Z Advantages of direct input-to-output connections in neural networks : the Elman network for stock index forecasting Wang, Yaoli Wang, Lipo Yang, Fangjun Di, Wenxia Chang, Qing School of Electrical and Electronic Engineering Engineering::Electrical and electronic engineering Direct Input-To-Output Connections The Elman Neural Network The Elman neural network (ElmanNN) is well-known for its capability of processing dynamic information, which has led to successful applications in stock forecasting. In this paper, we introduce direct input-to-output connections (DIOCs) into the ElmanNN and show that the proposed Elman neural network with DIOCs (Elman-DIOCs) significantly out-performs the original ElmanNN without such DIOCs. Four different global stock indices, i.e., the Shanghai Stock Exchange (SSE) Composite Index, the Korea Stock Price Index (KOSPI), the Nikkei 225 Index (Nikkei225), and the Standard & Poor's 500 Index (SPX), are used to demonstrate the affecacy of the Elman-DIOCs in time-series prediction. We systematically evaluate 8 models, depending whether or not there are hidden layer biases, whether or not there are output layer biases, and whether or not there are DIOCs. The experimental results show that DIOCs lead to much better prediction accuracy, while requiring fewer than a half of the hidden neurons. Take the SPX index, for example - the root mean squared error (RMSE) and the mean absolute error (MAE) of the Elman-DIOCs are improved by 44.2% and 41.1%, respectively, compared to the ElmanNN, and 65.6% and 60.8%, respectively, compared to the multi-layer perceptron (MLP). We argue that (1) DIOCs can always help to improve accuracy, while reducing network complexity and computational burden, as long as the problem at hand (either regression or classification) has linear components, and (2) most real-world applications contain linear components. Therefore DIOCs will be almost always beneficial in any types of neural networks for classification or regression. We also point out that in rare cases where the problem at hand is entirely nonlinear, DIOCs should not be used. This study is funded by Joint Research Fund for Overseas Chinese Scholars and Scholars in Hong Kong and Macao (Grant No. 61828601), Natural Science Foundation of Shanxi Province (Grant No. 201801D121141), and Provincial Program on Key Research Projects of Shanxi (Social Development Area) (Grant No. 201903D321003). 2021-12-23T08:05:41Z 2021-12-23T08:05:41Z 2021 Journal Article Wang, Y., Wang, L., Yang, F., Di, W. & Chang, Q. (2021). Advantages of direct input-to-output connections in neural networks : the Elman network for stock index forecasting. Information Sciences, 547, 1066-1079. https://dx.doi.org/10.1016/j.ins.2020.09.031 0020-0255 https://hdl.handle.net/10356/154501 10.1016/j.ins.2020.09.031 2-s2.0-85092258605 547 1066 1079 en Information Sciences © 2020 Elsevier Inc. All rights reserved.
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Engineering::Electrical and electronic engineering
Direct Input-To-Output Connections
The Elman Neural Network
spellingShingle Engineering::Electrical and electronic engineering
Direct Input-To-Output Connections
The Elman Neural Network
Wang, Yaoli
Wang, Lipo
Yang, Fangjun
Di, Wenxia
Chang, Qing
Advantages of direct input-to-output connections in neural networks : the Elman network for stock index forecasting
description The Elman neural network (ElmanNN) is well-known for its capability of processing dynamic information, which has led to successful applications in stock forecasting. In this paper, we introduce direct input-to-output connections (DIOCs) into the ElmanNN and show that the proposed Elman neural network with DIOCs (Elman-DIOCs) significantly out-performs the original ElmanNN without such DIOCs. Four different global stock indices, i.e., the Shanghai Stock Exchange (SSE) Composite Index, the Korea Stock Price Index (KOSPI), the Nikkei 225 Index (Nikkei225), and the Standard & Poor's 500 Index (SPX), are used to demonstrate the affecacy of the Elman-DIOCs in time-series prediction. We systematically evaluate 8 models, depending whether or not there are hidden layer biases, whether or not there are output layer biases, and whether or not there are DIOCs. The experimental results show that DIOCs lead to much better prediction accuracy, while requiring fewer than a half of the hidden neurons. Take the SPX index, for example - the root mean squared error (RMSE) and the mean absolute error (MAE) of the Elman-DIOCs are improved by 44.2% and 41.1%, respectively, compared to the ElmanNN, and 65.6% and 60.8%, respectively, compared to the multi-layer perceptron (MLP). We argue that (1) DIOCs can always help to improve accuracy, while reducing network complexity and computational burden, as long as the problem at hand (either regression or classification) has linear components, and (2) most real-world applications contain linear components. Therefore DIOCs will be almost always beneficial in any types of neural networks for classification or regression. We also point out that in rare cases where the problem at hand is entirely nonlinear, DIOCs should not be used.
author2 School of Electrical and Electronic Engineering
author_facet School of Electrical and Electronic Engineering
Wang, Yaoli
Wang, Lipo
Yang, Fangjun
Di, Wenxia
Chang, Qing
format Article
author Wang, Yaoli
Wang, Lipo
Yang, Fangjun
Di, Wenxia
Chang, Qing
author_sort Wang, Yaoli
title Advantages of direct input-to-output connections in neural networks : the Elman network for stock index forecasting
title_short Advantages of direct input-to-output connections in neural networks : the Elman network for stock index forecasting
title_full Advantages of direct input-to-output connections in neural networks : the Elman network for stock index forecasting
title_fullStr Advantages of direct input-to-output connections in neural networks : the Elman network for stock index forecasting
title_full_unstemmed Advantages of direct input-to-output connections in neural networks : the Elman network for stock index forecasting
title_sort advantages of direct input-to-output connections in neural networks : the elman network for stock index forecasting
publishDate 2021
url https://hdl.handle.net/10356/154501
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