Gold futures price forecast research----A combinatorial prediction method based on CEEMDAN-GARCH-SVR
DOI:
https://doi.org/10.54097/hbem.v17i.11355Keywords:
Predicting the Gold Price, Traditional Time Series Model, Decomposition Reconstruction Algorithm, CEEMDAN.Abstract
In recent years, the international form has become more and more complex, and various emergencies have constantly impacted the world economy. In this context, countries in the world need to maintain the stability of the domestic economic market and reasonably avoid financial risks. Gold plays a major role for both countries and individuals, and predicting the gold price is a prerequisite for making important decisions.In this paper, with the closing price of gold futures AU9999 from January 2,2008 to February 13,2023 as the research object. This paper mainly uses the traditional time series model for modeling, combined with the machine learning method, and introduces the decomposition reconstruction algorithm, hoping to achieve a better prediction effect. The traditional time-series model-error t-based ARIMA (2,1,2) -EGARCH (1,1) was established, and then the machine learning method SVR was used to model the data. In order to improve the performance of the model, this paper uses the CEEMDAN method to decompose the price sequence, and then decompose the IMF according to the high frequency sequence judgment condition summary into high frequency, low frequency and remaining term three sequence, make the original complicated sequence relatively simple, then with the traditional time series model for high frequency and low frequency modeling, SVR for the remaining term. Finally, we found that the decomposition modeling algorithm proposed here has the best prediction effect and made reasonable suggestions according to the prediction results.
Downloads
References
Ding Lei, Guo Wanshan. Study on Gold Price Prediction based on ARIMA-GARCH family hybrid model [J]. Journal of Xuchang College, 2019,38 (06): 124-129.
Hao Sun. The fTGARCH model and the GARCH-SVR model for predicting financial time series volatility [D]. Dalian University of Technology, 2020.
Huang Ying, Yang Huijie. Financial time series prediction based on the XGBoost and LSTM models [J]. Technology and Industry, 2021,21 (08): 158-162.
Qi Xie, a machine learning-based financial time series analysis method and its application [D]. Wuhan University of Science and Technology, 2020.
Chen Lingling. Application of machine learning in financial time series prediction [D]. Hangzhou Dianzi University, 2020.
Jianwei E , Ye J , Jin H . A novel hybrid model on the prediction of time series and its application for the gold price analysis and forecasting[J]. Physica A: Statistical Mechanics and its Applications, 2019, 527:121454.
Zhang P , Ci B . Deep belief network for gold price forecasting[J]. Resources Policy, 2020, 69(10):101806.
Jiang Chaoyu. Gold futures price forecast based on CNN-Transformer [D]. Shanghai University of Finance and Economics, 2021.
Liang Y, Lin Y, Lu Q. Forecasting gold price using a novel hybrid model with ICEEMDAN and LSTM-CNN-CBAM[J]. Expert Systems with Applications, 2022, 206: 117847.
He Linyun. Gold futures price prediction based on the ICEEMDAN-SE-SSA-ELM algorithm [J]. Journal of Lanzhou University of Arts and Sciences (Natural Science Edition), 2023,37 (01): 35-39.
Yuan Dongfang. Gold futures price forecast based on the CEEMDAN-PCA-LSTM model [D]. Shandong University, 2021.
Elsayed S, Thyssens D, Rashed A, et al. Do we really need deep learning models for time series forecasting?[J]. arXiv preprint arXiv:2101.02118, 2021.
Downloads
Published
Issue
Section
License

This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.






