Recently, to account for low-frequency market dynamics, several volatility models, employing high-frequency financial data, have been developed. However, in financial markets, we often observe that financial volatility processes depend on economic states, so they have a state heterogeneous structure. In this paper, to study state heterogeneous market dynamics based on high-frequency data, we introduce a novel volatility model based on a continuous Ito diffusion process whose intraday instantaneous volatility process evolves depending on the exogenous state variable, as well as its integrated volatility. We call it the state heterogeneous GARCH-Ito (SG-Ito) model. We suggest a quasi-likelihood estimation procedure with the realized volatility proxy and establish its asymptotic behaviors. Moreover, to test the low-frequency state heterogeneity, we develop a Wald test-type hypothesis testing procedure. The results of empirical studies suggest the existence of leverage, investor attention, market illiquidity, stock market comovement, and post-holiday effect in S&P 500 index volatility.
翻译:最近,为了说明低频市场动态,已经开发了几种波动模型,采用高频金融数据;然而,在金融市场,我们经常观察到金融波动过程取决于经济国家,因此它们具有一种州式的多样化结构;在本文中,为了研究基于高频数据的州性不同市场动态,我们引入了一种新的波动模型,其基础是连续的Ito扩散过程,其即时波动过程随着外源状态变量及其综合波动而演变。我们称之为州性混杂的GACH-Ito(SG-Ito)模式。我们建议用已实现的波动代号来进行准类似估计程序,并确立其零位行为。此外,为了测试低频状态的异质性,我们开发了沃尔德测试式假设测试程序。经验研究结果表明,S & P 500指数波动中存在杠杆、投资者注意力、市场流动性、股票市场波动和隔周后效应。