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Data Scaling Effect of Deep Learning in Financial Time Series Forecasting

Author

Listed:
  • Chen Liu
  • Minh-Ngoc Tran
  • Chao Wang
  • Richard Gerlach
  • Robert Kohn

Abstract

For many years, researchers have been exploring the use of deep learning in the forecasting of financial time series. However, they have continued to rely on the conventional econometric approach for model optimization, optimizing the deep learning models on individual assets. In this paper, we use the stock volatility forecast as an example to illustrate global training - optimizes the deep learning model across a wide range of stocks - is both necessary and beneficial for any academic or industry practitioners who is interested in employing deep learning to forecast financial time series. Furthermore, a pre-trained foundation model for volatility forecast is introduced, capable of making accurate zero-shot forecasts for any stocks.

Suggested Citation

  • Chen Liu & Minh-Ngoc Tran & Chao Wang & Richard Gerlach & Robert Kohn, 2023. "Data Scaling Effect of Deep Learning in Financial Time Series Forecasting," Papers 2309.02072, arXiv.org, revised Apr 2024.
  • Handle: RePEc:arx:papers:2309.02072
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    References listed on IDEAS

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