Improved particle swarm optimization for fuzzy based stock market turning points prediction

Stock prices usually appear as a series of zigzag patterns that move in upward and downward trends. These zigzag patterns are learned as a tool for predicting the stock market turning points. Identification of these zigzag patterns is a challenge because they occur in multi-resolutions and are hidde...

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Main Author: Phetchanchai, Chawalsak
Format: Thesis
Language:English
Published: 2013
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Online Access:http://eprints.utm.my/id/eprint/33794/5/ChawalsakPhetchanchaiPFSKSM2013.pdf
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spelling my.utm.337942017-07-24T01:23:31Z http://eprints.utm.my/id/eprint/33794/ Improved particle swarm optimization for fuzzy based stock market turning points prediction Phetchanchai, Chawalsak HF Commerce Stock prices usually appear as a series of zigzag patterns that move in upward and downward trends. These zigzag patterns are learned as a tool for predicting the stock market turning points. Identification of these zigzag patterns is a challenge because they occur in multi-resolutions and are hidden in the stock prices. Furthermore, learning from these zigzag patterns for prediction of stock market turning points involves vagueness or imprecision. To address these problems, this research proposed the swarm-based stock market turning points prediction model which is a combination of a zigzag patterns extraction method, and a mutation- capable particle swarm optimization method. This model also includes the stepwise regression analysis, adaptive neuro-fuzzy classifier, and subtractive clustering method. This study explores the benefits of the zigzag-based multi-ways search tree data structure to manage the zigzag patterns for extracting interesting zigzag patterns. Furthermore, the mutation capable particle swarm optimization method is used to optimize the parameters of subtractive clustering method for finding the optimal number of fuzzy rules of adaptive neuro-fuzzy classifier. Stepwise regression analysis is used to select the important features from the curse of input dimensions. Finally, adaptive neuro-fuzzy classifier is used for learning the historical turning points from the selected input features and the extracted zigzag patterns to predict stock market turning points. The proposed turning points prediction model is tested using stock market datasets which are the historical data of stocks listed as components of S&P500 index of New York Stock Exchange. These data are stock prices that are either moving upward, downward, or sideways. From the findings, the proposed turning points prediction model has the potential to improve the predictive accuracy, and the performance of stock market trading simulation. 2013-02 Thesis NonPeerReviewed application/pdf en http://eprints.utm.my/id/eprint/33794/5/ChawalsakPhetchanchaiPFSKSM2013.pdf Phetchanchai, Chawalsak (2013) Improved particle swarm optimization for fuzzy based stock market turning points prediction. PhD thesis, Universiti Teknologi Malaysia, Faculty of Computing. http://dms.library.utm.my:8080/vital/access/manager/Repository/vital:69907?site_name=Restricted Repository
institution Universiti Teknologi Malaysia
building UTM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Malaysia
content_source UTM Institutional Repository
url_provider http://eprints.utm.my/
language English
topic HF Commerce
spellingShingle HF Commerce
Phetchanchai, Chawalsak
Improved particle swarm optimization for fuzzy based stock market turning points prediction
description Stock prices usually appear as a series of zigzag patterns that move in upward and downward trends. These zigzag patterns are learned as a tool for predicting the stock market turning points. Identification of these zigzag patterns is a challenge because they occur in multi-resolutions and are hidden in the stock prices. Furthermore, learning from these zigzag patterns for prediction of stock market turning points involves vagueness or imprecision. To address these problems, this research proposed the swarm-based stock market turning points prediction model which is a combination of a zigzag patterns extraction method, and a mutation- capable particle swarm optimization method. This model also includes the stepwise regression analysis, adaptive neuro-fuzzy classifier, and subtractive clustering method. This study explores the benefits of the zigzag-based multi-ways search tree data structure to manage the zigzag patterns for extracting interesting zigzag patterns. Furthermore, the mutation capable particle swarm optimization method is used to optimize the parameters of subtractive clustering method for finding the optimal number of fuzzy rules of adaptive neuro-fuzzy classifier. Stepwise regression analysis is used to select the important features from the curse of input dimensions. Finally, adaptive neuro-fuzzy classifier is used for learning the historical turning points from the selected input features and the extracted zigzag patterns to predict stock market turning points. The proposed turning points prediction model is tested using stock market datasets which are the historical data of stocks listed as components of S&P500 index of New York Stock Exchange. These data are stock prices that are either moving upward, downward, or sideways. From the findings, the proposed turning points prediction model has the potential to improve the predictive accuracy, and the performance of stock market trading simulation.
format Thesis
author Phetchanchai, Chawalsak
author_facet Phetchanchai, Chawalsak
author_sort Phetchanchai, Chawalsak
title Improved particle swarm optimization for fuzzy based stock market turning points prediction
title_short Improved particle swarm optimization for fuzzy based stock market turning points prediction
title_full Improved particle swarm optimization for fuzzy based stock market turning points prediction
title_fullStr Improved particle swarm optimization for fuzzy based stock market turning points prediction
title_full_unstemmed Improved particle swarm optimization for fuzzy based stock market turning points prediction
title_sort improved particle swarm optimization for fuzzy based stock market turning points prediction
publishDate 2013
url http://eprints.utm.my/id/eprint/33794/5/ChawalsakPhetchanchaiPFSKSM2013.pdf
http://eprints.utm.my/id/eprint/33794/
http://dms.library.utm.my:8080/vital/access/manager/Repository/vital:69907?site_name=Restricted Repository
_version_ 1643649432812519424
score 13.160551