Please use this identifier to cite or link to this item: https://www.um.edu.mt/library/oar/handle/123456789/120596
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dc.date.accessioned2024-04-09T11:52:29Z-
dc.date.available2024-04-09T11:52:29Z-
dc.date.issued2023-
dc.identifier.citationXuereb, S. (2023). Generation of synthetic data to improve financial prediction models (Master's dissertation).en_GB
dc.identifier.urihttps://www.um.edu.mt/library/oar/handle/123456789/120596-
dc.descriptionM.Sc.(Melit.)en_GB
dc.description.abstractThe main issue at the heart of this dissertation is the improvement of ML financial prediction systems through the use of augmented training data. An overview and assessment of various financial data synthesis methods has been carried out. To be able to accomplish this assessment, a review of evaluation methods had to be undertaken keeping in mind that asset price time sequences have characteristics that will be missed if only the typical statistical measures are used. This is because asset time sequences have particular patterns that play out over the time dimension in addition to the magnitude dimension. Augmented asset price time sequences may be useful in a number of scenarios. High fidelity synthetic data may be needed to substitute real data to preserve confidentiality. The temporal portions of the data that are of interest may be short as is the case for financial bubbles or short lived changes in the behavior of market participants which require the training data to exhibit these particular characteristics repeatedly. In addition to this, ML systems improve in their ability to deal with unseen data if they are trained on larger datasets. The objective of this work is to choose the best performing (in terms of fidelity) financial data synthesis method and to verify that the data thus generated actually improves the performance of an asset price prediction system. We undertook to use a number of qualitative visual evaluation metrics that helped confirm the quantitative assessments carried out. This resulted in SigCWGAN being selected. The asset time series generated using this GAN were then used to train an ARIMA/RNN asset price prediction system. The data obtained using SigCWGAN did, in fact result in an improvement in the performance of the predictive system we used in terms of MAE, MSE and MAPE metrics.en_GB
dc.language.isoenen_GB
dc.rightsinfo:eu-repo/semantics/openAccessen_GB
dc.subjectStock price forecastingen_GB
dc.subjectStochastic analysisen_GB
dc.subjectMachine learningen_GB
dc.subjectData setsen_GB
dc.titleGeneration of synthetic data to improve financial prediction modelsen_GB
dc.typemasterThesisen_GB
dc.rights.holderThe copyright of this work belongs to the author(s)/publisher. The rights of this work are as defined by the appropriate Copyright Legislation or as modified by any successive legislation. Users may access this work and can make use of the information contained in accordance with the Copyright Legislation provided that the author must be properly acknowledged. Further distribution or reproduction in any format is prohibited without the prior permission of the copyright holder.en_GB
dc.publisher.institutionUniversity of Maltaen_GB
dc.publisher.departmentFaculty of Information and Communication Technology. Department of Artificial Intelligenceen_GB
dc.description.reviewedN/Aen_GB
dc.contributor.creatorXuereb, Stefan (2023)-
Appears in Collections:Dissertations - FacICT - 2023
Dissertations - FacICTAI - 2023

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