From GARCH to Neural Network for Volatility Forecast

Authors

  • Pengfei Zhao Guangdong Provincial Key Laboratory of Interdisciplinary Research and Application for Data Science BNU-HKBU United International College
  • Haoren Zhu Hong Kong University of Science and Technology
  • Wilfred Siu Hung NG Hong Kong University of Science and Technology
  • Dik Lun Lee Hong Kong University of Science and Technology

DOI:

https://doi.org/10.1609/aaai.v38i15.29643

Keywords:

ML: Time-Series/Data Streams, DMKM: Applications, ML: Applications

Abstract

Volatility, as a measure of uncertainty, plays a crucial role in numerous financial activities such as risk management. The Econometrics and Machine Learning communities have developed two distinct approaches for financial volatility forecasting: the stochastic approach and the neural network (NN) approach. Despite their individual strengths, these methodologies have conventionally evolved in separate research trajectories with little interaction between them. This study endeavors to bridge this gap by establishing an equivalence relationship between models of the GARCH family and their corresponding NN counterparts. With the equivalence relationship established, we introduce an innovative approach, named GARCH-NN, for constructing NN-based volatility models. It obtains the NN counterparts of GARCH models and integrates them as components into an established NN architecture, thereby seamlessly infusing volatility stylized facts (SFs) inherent in the GARCH models into the neural network. We develop the GARCH-LSTM model to showcase the power of GARCH-NN approach. Experiment results validate that amalgamating the NN counterparts of the GARCH family models into established NN models leads to enhanced outcomes compared to employing the stochastic and NN models in isolation.

Published

2024-03-24

How to Cite

Zhao, P., Zhu, H., NG, W. S. H., & Lee, D. L. (2024). From GARCH to Neural Network for Volatility Forecast. Proceedings of the AAAI Conference on Artificial Intelligence, 38(15), 16998-17006. https://doi.org/10.1609/aaai.v38i15.29643

Issue

Section

AAAI Technical Track on Machine Learning VI