Multi-step time series forecasting

Time series forecasting has come a long way over the years, transitioning from statistical models, to machine learning models, and now to deep learning models. Transformer-based models have held the top spots for the state-of-the-art time series benchmarking, but recent trends have been deviating fr...

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Bibliographic Details
Main Author: Lin, Jacky
Other Authors: Vidya Sudarshan
Format: Final Year Project
Language:English
Published: Nanyang Technological University 2024
Subjects:
Online Access:https://hdl.handle.net/10356/175371
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-1753712024-04-26T15:43:09Z Multi-step time series forecasting Lin, Jacky Vidya Sudarshan School of Computer Science and Engineering vidya.sudarshan@ntu.edu.sg Computer and Information Science Time series forecasting has come a long way over the years, transitioning from statistical models, to machine learning models, and now to deep learning models. Transformer-based models have held the top spots for the state-of-the-art time series benchmarking, but recent trends have been deviating from this, with the introduction of Segmented Recurrent Neural Network (SegRNN) and Patch Time Series Transformer (PatchTST). This study aims to assess the effectiveness of these models in multi-step forecasting, specifically in the ETT datasets that are commonly used in time series benchmarking tests. A comparative study was done which highlighted their nearly equivalent performance in terms of predictive accuracy. SegRNN however, distinguished itself with a substantially faster processing speed when training on the datasets. A novel hybrid model was also introduced that aims to combine the strengths from each of these models, with 10-fold cross-validation performed to ensure robustness and generalisability. Despite not achieving better benchmarks than the current models, it brought up interesting avenues for future research areas, including exploring diverse ensemble methods and refining architectures. This should ideally help to capture and learn the complex relationships between the outputs of the component models in the hybrid model. This study thus provided some insights for advancing long-term forecasting methodologies. Bachelor's degree 2024-04-22T04:55:07Z 2024-04-22T04:55:07Z 2024 Final Year Project (FYP) Lin, J. (2024). Multi-step time series forecasting. Final Year Project (FYP), Nanyang Technological University, Singapore. https://hdl.handle.net/10356/175371 https://hdl.handle.net/10356/175371 en SCSE23-0686 application/pdf Nanyang Technological University
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Computer and Information Science
spellingShingle Computer and Information Science
Lin, Jacky
Multi-step time series forecasting
description Time series forecasting has come a long way over the years, transitioning from statistical models, to machine learning models, and now to deep learning models. Transformer-based models have held the top spots for the state-of-the-art time series benchmarking, but recent trends have been deviating from this, with the introduction of Segmented Recurrent Neural Network (SegRNN) and Patch Time Series Transformer (PatchTST). This study aims to assess the effectiveness of these models in multi-step forecasting, specifically in the ETT datasets that are commonly used in time series benchmarking tests. A comparative study was done which highlighted their nearly equivalent performance in terms of predictive accuracy. SegRNN however, distinguished itself with a substantially faster processing speed when training on the datasets. A novel hybrid model was also introduced that aims to combine the strengths from each of these models, with 10-fold cross-validation performed to ensure robustness and generalisability. Despite not achieving better benchmarks than the current models, it brought up interesting avenues for future research areas, including exploring diverse ensemble methods and refining architectures. This should ideally help to capture and learn the complex relationships between the outputs of the component models in the hybrid model. This study thus provided some insights for advancing long-term forecasting methodologies.
author2 Vidya Sudarshan
author_facet Vidya Sudarshan
Lin, Jacky
format Final Year Project
author Lin, Jacky
author_sort Lin, Jacky
title Multi-step time series forecasting
title_short Multi-step time series forecasting
title_full Multi-step time series forecasting
title_fullStr Multi-step time series forecasting
title_full_unstemmed Multi-step time series forecasting
title_sort multi-step time series forecasting
publisher Nanyang Technological University
publishDate 2024
url https://hdl.handle.net/10356/175371
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