Forecasting Nonstationary Time Series Based on Dicrete Hilbert Transform
Keywords:
Hilbert Transform, Forecasting, Time Series, Machine Learning
Abstract
Various predictive methods have been applied to predict the value of stocks. The purpose of this research is to implement the discrete Hilbert transform in stock returns. The ability to predict stock price movements has big implications for investors. Traditional methods are often limited in capturing the complexity of market dynamics. It was found that the proposed method obtained an average of MAE, RMSE and MAPE values of 0.02055, 0.02237, and 0.012985 which is lower than the conventional LSTM method. This research provides a new understanding of the application of discrete Hilbert transform in a dynamic global financial context.
Published
2024-08-04
How to Cite
Ekasasmita, W., Tunnisa, K., & Aditya, M. T. (2024). Forecasting Nonstationary Time Series Based on Dicrete Hilbert Transform. Statistics, Optimization & Information Computing. Retrieved from http://47.88.85.238/index.php/soic/article/view/2060
Issue
Section
Research Articles
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