Full Text Available

Note: Clicking the button above will open the full text document at the original institutional repository in a new window.

Artificial Neural Networks in Stock Return Prediction: Testing Model Specification in a Global Context

This research investigates whether artificial neural networks which make use of firm specific fundamental and technical factors can accurately predict the returns of a sample of several large-cap stocks from various markets across the globe. This study also explores which hidden layer configuration...

Full description

Saved in:
Bibliographic Details
Main Author: Buxton-Tetteh, Naa Ayorkor
Other Authors: van Rensburg, Paul
Format: Thesis
Language:English
Published: Department of Finance and Tax 2021
Subjects:
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1867613940501970944
access_status_str Open Access
author Buxton-Tetteh, Naa Ayorkor
author2 van Rensburg, Paul
author_browse Buxton-Tetteh, Naa Ayorkor
van Rensburg, Paul
author_facet van Rensburg, Paul
Buxton-Tetteh, Naa Ayorkor
author_sort Buxton-Tetteh, Naa Ayorkor
collection Thesis
description This research investigates whether artificial neural networks which make use of firm specific fundamental and technical factors can accurately predict the returns of a sample of several large-cap stocks from various markets across the globe. This study also explores which hidden layer configuration leads to the best network predictive performance. Furthermore, this research identifies which firm-specific factors predominantly influence the predictions made by the artificial neural networks. Five artificial neural networks are designed, trained and tested on a sample of 161 stocks from the Russell 1000 and the S&P International 700 stock indices. The investigation period extends over a 166-month period from January 2001 to October 2014 with a 70:30 split for training and testing subsamples respectively. Eighteen firm-specific factors, based on prior research about the presence of style effects or anomalies on the cross-section of global equity returns, are used as the input variables of the artificial neural networks to forecast one-month forward returns of all the stocks in the sample. The five artificial neural networks investigated in this research differed in hidden layer size. Specifically, the number of hidden neurons examined were three, nine, 13, 18 and 30. All five networks train significantly well, with each network's training error indicating a good model fit. Each network also achieves the desirable information coefficient of 0.1 between its predicted returns and the actual returns in the training sample. It is interestingly discovered that network performance generally improves as the number of hidden neurons in the hidden layer increases until a specific point, after which network performance weakens. In the context of avoiding overfitting, the best-trained network in this research is that with 13 neurons in its hidden layer. This is the primary network used for the out-of sample testing analysis. This network achieves an average prediction error magnitude of approximately 7% and an information coefficient of 0.05 during out-of-sample testing. These results underperform their respective benchmarks moderately. However, further analyses of the network's performance suggest an overall poor out-of-sample predictive ability. This is illustrated by a significant bias and a considerably weak relationship between the network's predicted returns and the actual returns in the testing sample. Global sensitivity analysis reveals that growth style effects, particularly, the capital expenditure ratio, return on equity, sales growth, 12-month percentage change in non-current assets and six-month percentage change in asset turnover were the most persistent factors across all the ANN models. Other significant factors include the 12-month percentage change in monthly volume traded, three-month cumulative prior return and one-month prior return. An unconventional result of this analysis is the relative insignificance of the size and value style effects.
format Thesis
id oai:open.uct.ac.za:11427/32567
institution University of Cape Town (South Africa)
language eng
last_indexed 2026-06-10T12:44:08.019Z
license_str Not specified — see source repository
provenance_str_mv Harvested via OAI-PMH from UCTD — University of Cape Town Open Access Repository
publishDate 2021
publishDateRange 2021
publishDateSort 2021
publisher Department of Finance and Tax
publisherStr Department of Finance and Tax
record_format dspace
source_str UCTD — University of Cape Town Open Access Repository
spelling oai:open.uct.ac.za:11427/32567 Artificial Neural Networks in Stock Return Prediction: Testing Model Specification in a Global Context Buxton-Tetteh, Naa Ayorkor van Rensburg, Paul Investment Management This research investigates whether artificial neural networks which make use of firm specific fundamental and technical factors can accurately predict the returns of a sample of several large-cap stocks from various markets across the globe. This study also explores which hidden layer configuration leads to the best network predictive performance. Furthermore, this research identifies which firm-specific factors predominantly influence the predictions made by the artificial neural networks. Five artificial neural networks are designed, trained and tested on a sample of 161 stocks from the Russell 1000 and the S&P International 700 stock indices. The investigation period extends over a 166-month period from January 2001 to October 2014 with a 70:30 split for training and testing subsamples respectively. Eighteen firm-specific factors, based on prior research about the presence of style effects or anomalies on the cross-section of global equity returns, are used as the input variables of the artificial neural networks to forecast one-month forward returns of all the stocks in the sample. The five artificial neural networks investigated in this research differed in hidden layer size. Specifically, the number of hidden neurons examined were three, nine, 13, 18 and 30. All five networks train significantly well, with each network's training error indicating a good model fit. Each network also achieves the desirable information coefficient of 0.1 between its predicted returns and the actual returns in the training sample. It is interestingly discovered that network performance generally improves as the number of hidden neurons in the hidden layer increases until a specific point, after which network performance weakens. In the context of avoiding overfitting, the best-trained network in this research is that with 13 neurons in its hidden layer. This is the primary network used for the out-of sample testing analysis. This network achieves an average prediction error magnitude of approximately 7% and an information coefficient of 0.05 during out-of-sample testing. These results underperform their respective benchmarks moderately. However, further analyses of the network's performance suggest an overall poor out-of-sample predictive ability. This is illustrated by a significant bias and a considerably weak relationship between the network's predicted returns and the actual returns in the testing sample. Global sensitivity analysis reveals that growth style effects, particularly, the capital expenditure ratio, return on equity, sales growth, 12-month percentage change in non-current assets and six-month percentage change in asset turnover were the most persistent factors across all the ANN models. Other significant factors include the 12-month percentage change in monthly volume traded, three-month cumulative prior return and one-month prior return. An unconventional result of this analysis is the relative insignificance of the size and value style effects. 2021-01-19T12:52:25Z 2021-01-19T12:52:25Z 2020 2021-01-04T12:34:54Z Master Thesis Masters MCom http://hdl.handle.net/11427/32567 eng application/pdf Department of Finance and Tax Faculty of Commerce
spellingShingle Investment Management
Buxton-Tetteh, Naa Ayorkor
Artificial Neural Networks in Stock Return Prediction: Testing Model Specification in a Global Context
thesis_degree_str Master's
title Artificial Neural Networks in Stock Return Prediction: Testing Model Specification in a Global Context
title_full Artificial Neural Networks in Stock Return Prediction: Testing Model Specification in a Global Context
title_fullStr Artificial Neural Networks in Stock Return Prediction: Testing Model Specification in a Global Context
title_full_unstemmed Artificial Neural Networks in Stock Return Prediction: Testing Model Specification in a Global Context
title_short Artificial Neural Networks in Stock Return Prediction: Testing Model Specification in a Global Context
title_sort artificial neural networks in stock return prediction testing model specification in a global context
topic Investment Management
url http://hdl.handle.net/11427/32567
work_keys_str_mv AT buxtontettehnaaayorkor artificialneuralnetworksinstockreturnpredictiontestingmodelspecificationinaglobalcontext