Modeling and forecasting stock return volatility using the HARGARCH model with VIX information

IF 1.8 4区 经济学 Q2 BUSINESS, FINANCE
Zhiyuan Pan, Jun Zhang, Yudong Wang, Juan Huang
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引用次数: 0

Abstract

This study develops a novel approach for improving stock return volatility forecasts using volatility index information with the entropic tilting technique. Unlike traditional linear heteroskedasticity autoregressive methods with option-implied information, we first derive predictive densities from traditional models, and then tilt using both the first and second moments of the risk-neutral distribution, which enables us to capture the nonlinear effect in our specification. The empirical findings demonstrate a substantial enhancement in the forecasting accuracy of all models once the first- and second-moment information is considered, where the improvement is both statistically and economically significant. These results have important implications for risk management in well-established derivatives markets.

利用包含 VIX 信息的 HARGARCH 模型对股票收益波动性进行建模和预测
本研究利用熵倾斜技术开发了一种利用波动率指数信息改进股票收益波动率预测的新方法。与使用期权隐含信息的传统线性异方差自回归方法不同,我们首先从传统模型中推导出预测密度,然后使用风险中性分布的第一矩和第二矩进行倾斜,这使我们能够捕捉到规范中的非线性效应。实证研究结果表明,一旦考虑到第一和第二矩信息,所有模型的预测准确性都会大幅提高,而且这种提高在统计和经济上都是显著的。这些结果对成熟衍生品市场的风险管理具有重要意义。
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来源期刊
Journal of Futures Markets
Journal of Futures Markets BUSINESS, FINANCE-
CiteScore
3.70
自引率
15.80%
发文量
91
期刊介绍: The Journal of Futures Markets chronicles the latest developments in financial futures and derivatives. It publishes timely, innovative articles written by leading finance academics and professionals. Coverage ranges from the highly practical to theoretical topics that include futures, derivatives, risk management and control, financial engineering, new financial instruments, hedging strategies, analysis of trading systems, legal, accounting, and regulatory issues, and portfolio optimization. This publication contains the very latest research from the top experts.
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