Empirical validation of ELM trained neural networks for financial modelling
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In: Neural Computing and Applications, Vol. 35, No. 2, 01.2023, p. 1581-1605.
Research output: Contribution to journal › Article › peer-review
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TY - JOUR
T1 - Empirical validation of ELM trained neural networks for financial modelling
AU - Novykov, Volodymyr
AU - Bilson, Christoper
AU - Gepp, Adrian
AU - Harris, Geoff
AU - Vanstone, Bruce
N1 - Open Access funding enabled and organized by CAUL and its Member Institutions.
PY - 2023/1
Y1 - 2023/1
N2 - The purpose of this work is to compare predictive performance of neural networks trained using the relatively novel technique of training single hidden layer feedforward neural networks (SFNN), called Extreme Learning Machine (ELM), with commonly used backpropagation-trained recurrent neural networks (RNN) as applied to the task of financial market prediction. Evaluated on a set of large capitalisation stocks on the Australian market, specifically the components of the ASX20, ELM-trained SFNNs showed superior performance over RNNs for individual stock price prediction. While this conclusion of efficacy holds generally, long short-term memory (LSTM) RNNs were found to outperform for a small subset of stocks. Subsequent analysis identified several areas of performance deviations which we highlight as potentially fruitful areas for further research and performance improvement.
AB - The purpose of this work is to compare predictive performance of neural networks trained using the relatively novel technique of training single hidden layer feedforward neural networks (SFNN), called Extreme Learning Machine (ELM), with commonly used backpropagation-trained recurrent neural networks (RNN) as applied to the task of financial market prediction. Evaluated on a set of large capitalisation stocks on the Australian market, specifically the components of the ASX20, ELM-trained SFNNs showed superior performance over RNNs for individual stock price prediction. While this conclusion of efficacy holds generally, long short-term memory (LSTM) RNNs were found to outperform for a small subset of stocks. Subsequent analysis identified several areas of performance deviations which we highlight as potentially fruitful areas for further research and performance improvement.
KW - Extreme Learning Machine
KW - Stock Price prediction
KW - Long short-term memory
KW - Recurrent Neural Network
U2 - 10.1007/s00521-022-07792-3
DO - 10.1007/s00521-022-07792-3
M3 - Article
VL - 35
SP - 1581
EP - 1605
JO - Neural Computing and Applications
JF - Neural Computing and Applications
SN - 1433-3058
IS - 2
ER -