Back to Search Start Over

Stock Volatility Prediction Based on Transformer Model Using Mixed-Frequency Data

Authors :
Liu, Wenting
Gui, Zhaozhong
Jiang, Guilin
Tang, Lihua
Zhou, Lichun
Leng, Wan
Zhang, Xulong
Liu, Yujiang
Publication Year :
2023

Abstract

With the increasing volume of high-frequency data in the information age, both challenges and opportunities arise in the prediction of stock volatility. On one hand, the outcome of prediction using tradition method combining stock technical and macroeconomic indicators still leaves room for improvement; on the other hand, macroeconomic indicators and peoples' search record on those search engines affecting their interested topics will intuitively have an impact on the stock volatility. For the convenience of assessment of the influence of these indicators, macroeconomic indicators and stock technical indicators are then grouped into objective factors, while Baidu search indices implying people's interested topics are defined as subjective factors. To align different frequency data, we introduce GARCH-MIDAS model. After mixing all the above data, we then feed them into Transformer model as part of the training data. Our experiments show that this model outperforms the baselines in terms of mean square error. The adaption of both types of data under Transformer model significantly reduces the mean square error from 1.00 to 0.86.<br />Comment: Accepted by the 7th APWeb-WAIM International Joint Conference on Web and Big Data. (APWeb 2023)

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2309.16196
Document Type :
Working Paper