An Evaluation of Machine Learning and Deep Learning for Time Series Forecasting

dc.contributor.advisorShelton, Peiris
dc.contributor.authorGadhi, Adel
dc.date.accessioned2025-08-18T05:20:40Z
dc.date.issued2025-08
dc.description.abstractThis thesis investigates the use of machine learning and hybrid models to forecast time series data such as climate patterns, oil prices, Australian beer production, and sunspot activity. It examines traditional models like ARIMA and GARCH, as well as machine learning methods such as SVR, LSTM, RF, and DT, which better capture non-linear and complex relationships. The study also evaluates hybrid models like ARIMA-ANN and GARMA-LSTM, which consistently demonstrate superior forecasting accuracy across various datasets. The GARMA-LSTM model, in particular, proves effective for long-term forecasting, especially with sunspot and beer production data. Finally, the thesis applies an advanced deep learning system, WGAN-GP, to financial and climate data, showing that modern methods can move beyond classical assumptions and better capture complex, high-order dynamics.
dc.format.extent212
dc.identifier.urihttps://hdl.handle.net/20.500.14154/76172
dc.language.isoen
dc.publisherSaudi Digital Library
dc.subjectARIMA
dc.subjectARFIMA
dc.subjectGARMA
dc.subjectWGAN
dc.subjectANN
dc.subjectLSTM
dc.subjectDeep Learning
dc.subjectHybrid Models
dc.subjectMachines Learning
dc.subjectTime Series
dc.subjectVolatility
dc.subjectStatistics
dc.titleAn Evaluation of Machine Learning and Deep Learning for Time Series Forecasting
dc.typeThesis
sdl.degree.departmentMathematics and statistics
sdl.degree.disciplineStatistics
sdl.degree.grantorUniversity of Sydney
sdl.degree.nameDoctor of Philosophy
sdl.thesis.sourceSACM - Australia

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