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Non-stationary Financial Time Series Forecasting Based on Meta-Learning
  • +1
  • Anqi Hong,
  • Minghan Gao,
  • Qiang Gao,
  • Xiaohong Peng
Anqi Hong
Beihang University School of Electronic and Information Engineering

Corresponding Author:honganqi19980530@buaa.edu.cn

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Minghan Gao
Beijing University of Posts and Telecommunications School of Artificial Intelligence
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Qiang Gao
Beihang University School of Electronic and Information Engineering
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Xiaohong Peng
Birmingham City University Faculty of Computing Engineering and the Built Environment
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Abstract

In this letter, we address the challenge in forecasting non-stationary financial time series by proposing a meta-learning based forecasting model equipped with a CNN predictor and a LSTM meta-learner. The model is applied to a set of short subseries which are the result of dividing a long non-stationary financial time series. As a result, a promising performance can be achieved by the proposed model in terms of making more accurate prediction than the traditional CNN predictor and AR based forecasting models in non-stationary conditions.
08 Sep 2022Submitted to Electronics Letters
09 Sep 2022Submission Checks Completed
09 Sep 2022Assigned to Editor
15 Sep 2022Reviewer(s) Assigned
06 Nov 2022Review(s) Completed, Editorial Evaluation Pending
06 Nov 2022Editorial Decision: Revise Minor
18 Nov 20221st Revision Received
18 Nov 2022Submission Checks Completed
18 Nov 2022Assigned to Editor
18 Nov 2022Review(s) Completed, Editorial Evaluation Pending
19 Nov 2022Editorial Decision: Accept