Data augmentation and mixup techniques for stock returns prediction
In financial forecasting, the caliber of data underpinning models is critical for precision in predicting market trends. This research investigates the efficacy of data aug- mentation, a technique widely used in domains such as image processing, applied to financial time series. We assess how method...
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sg-ntu-dr.10356-1754622024-04-26T15:31:13Z Data augmentation and mixup techniques for stock returns prediction Tan, Regan Yik Rong Bo An School of Computer Science and Engineering boan@ntu.edu.sg Computer and Information Science Mathematical Sciences Other Quantitative finance Stocks Data science Machine learning In financial forecasting, the caliber of data underpinning models is critical for precision in predicting market trends. This research investigates the efficacy of data aug- mentation, a technique widely used in domains such as image processing, applied to financial time series. We assess how methods like Cut Mix, Linear Mix, and Amplitude Mix—augmented with filters such as Savgol, Kalman, and LOWESS—can refine predictive models. The hypothesis posits that these augmentations can uphold data integrity while infusing beneficial variability to enhance model robustness and forecasting accuracy. Results confirm that Linear Mix and Amplitude Mix improve classification performance by introducing manageable variability without sacrificing the data’s core structure. In contrast, Cut Mix often decreases accuracy, underscoring the potential drawbacks of excessive data modification. The findings suggest a strategic equilibrium in data augmentation is paramount for advancing the adaptability and accuracy of financial forecasting tools. Bachelor's degree 2024-04-24T08:08:17Z 2024-04-24T08:08:17Z 2024 Final Year Project (FYP) Tan, R. Y. R. (2024). Data augmentation and mixup techniques for stock returns prediction. Final Year Project (FYP), Nanyang Technological University, Singapore. https://hdl.handle.net/10356/175462 https://hdl.handle.net/10356/175462 en SCSE23-0057 application/pdf Nanyang Technological University |
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Computer and Information Science Mathematical Sciences Other Quantitative finance Stocks Data science Machine learning Tan, Regan Yik Rong Data augmentation and mixup techniques for stock returns prediction |
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In financial forecasting, the caliber of data underpinning models is critical for precision in predicting market trends. This research investigates the efficacy of data aug- mentation, a technique widely used in domains such as image processing, applied to financial time series. We assess how methods like Cut Mix, Linear Mix, and Amplitude Mix—augmented with filters such as Savgol, Kalman, and LOWESS—can refine predictive models. The hypothesis posits that these augmentations can uphold data integrity while infusing beneficial variability to enhance model robustness and forecasting accuracy. Results confirm that Linear Mix and Amplitude Mix improve classification performance by introducing manageable variability without sacrificing the data’s core structure. In contrast, Cut Mix often decreases accuracy, underscoring the potential drawbacks of excessive data modification. The findings suggest a strategic equilibrium in data augmentation is paramount for advancing the adaptability and accuracy of financial forecasting tools. |
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Bo An |
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Bo An Tan, Regan Yik Rong |
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Final Year Project |
author |
Tan, Regan Yik Rong |
author_sort |
Tan, Regan Yik Rong |
title |
Data augmentation and mixup techniques for stock returns prediction |
title_short |
Data augmentation and mixup techniques for stock returns prediction |
title_full |
Data augmentation and mixup techniques for stock returns prediction |
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Data augmentation and mixup techniques for stock returns prediction |
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Data augmentation and mixup techniques for stock returns prediction |
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data augmentation and mixup techniques for stock returns prediction |
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Nanyang Technological University |
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2024 |
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https://hdl.handle.net/10356/175462 |
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