Optimal selection of stocks using computational intelligence methods

dc.contributor.authorBetechuoh, Brain Leke
dc.date.accessioned2006-02-08T13:50:37Z
dc.date.available2006-02-08T13:50:37Z
dc.date.issued2006-02-08
dc.descriptionMaster of Science in Engineering - Engineeringen
dc.description.abstractVarious methods, mostly statistical in nature have been introduced for stock market modelling and prediction. These methods are, however, complex and difficult to manipulate. Computational intelligence facilitates this approach of predicting stocks due to its ability to accurately and intuitively learn complex patterns and characterise these patterns as simple equations. In this research, a methodology that uses neural networks and Bayesian framework to model stocks is developed. The NASDAQ all-share index was used as test data. A methodology to optimise the input time-window for stock prediction using neural networks was also devised. Polynomial approximation and reformulated Bayesian frameworks methodologies were investigated and implemented. A neural network based algorithm was then designed. The performance of this final algorithm was measured based on accuracy. The effect of simultaneous use of diverse neural network engines is also investigated. The test result and accuracy measurements are presented in the final part of this thesis. Key words: Neural Networks, Bayesian framework and Markov Chain Monte Carloen
dc.format.extent547718 bytes
dc.format.mimetypeapplication/pdf
dc.identifier.urihttp://hdl.handle.net/10539/165
dc.language.isoen
dc.subjectintelligenceen
dc.subjectcomputationalen
dc.subjectstocksen
dc.subjectoptimal selectionen
dc.titleOptimal selection of stocks using computational intelligence methodsen
dc.typeThesisen
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