随机系数连续系统:极端样本路径行为的检验

Random coefficient continuous systems: Testing for extreme sample path behavior

Journal of Econometrics · 2019
被引 18
人大 AABS 4

中文导读

研究具有随机持久参数的连续时间动态系统,提出基于实现波动率的两阶段估计方法和检验统计量,用于识别极端样本路径行为,实证发现标普500指数存在长期极端行为。

Abstract

This paper studies a continuous time dynamic system with a random persistence parameter. The exact discrete time representation is obtained and related to several discrete time random coefficient models currently in the literature. The model distinguishes various forms of unstable and explosive behavior according to specific regions of the parameter space that open up the potential for testing these forms of extreme behavior. A two-stage approach that employs realized volatility is proposed for the continuous system estimation, asymptotic theory is developed, and test statistics to identify the different forms of extreme sample path behavior are proposed. Simulations show that the proposed estimators work well in empirically realistic settings and that the tests have good size and power properties in discriminating characteristics in the data that differ from typical unit root behavior. The theory is extended to cover models where the random persistence parameter is endogenously determined. An empirical application based on daily real S&P 500 index data over 1928–2018 reveals strong evidence against parameter constancy over the whole sample period leading to a long duration of what the model characterizes as extreme behavior in real stock prices.

随机系数连续系统极端样本路径单位根检验时变持续性