We develop a new stock market index that captures the chaos existing in the market by measuring the mutual changes of asset prices. This new index relies on a tensor-based embedding of the stock market information, which in turn frees it from the restrictive value- or capitalization-weighting assumptions that commonly underlie other various popular indexes. We show that our index is a robust estimator of the market volatility which enables us to characterize the market by performing the task of segmentation with a high degree of reliability. In addition, we analyze the dynamics and kinematics of the realized market volatility as compared to the implied volatility by introducing a time-dependent dynamical system model. Our computational results which pertain to the time period from January 1990 to December 2019 imply that there exist a bidirectional causal relation between the processes underlying the realized and implied volatility of the stock market within the given time period, where it is shown that the later has a stronger causal effect on the former as compared to the opposite. This result connotes that the implied volatility of the market plays a key role in characterization of the market's realized volatility.
翻译:我们开发了新的股票市场指数,通过衡量资产价格的相互变化来捕捉市场中的混乱。这一新指数依赖于基于股票市场信息的快速嵌入,而这反过来又使它摆脱了其他各种流行指数通常所依据的限制性价值或资本加权假设。我们表明,我们的指数是市场波动的有力估计者,它使我们能够通过以高度可靠程度执行分化任务来描述市场特征。此外,我们分析了已实现市场波动的动态和动态与隐含的波动相比的动态和动态。我们计算结果与1990年1月至2019年12月的时期有关,表明在特定时期内,股票市场已实现和隐含的波动过程之间存在双向因果关系,表明后一种过程对市场具有较强的因果关系。这一结果表明,市场隐含的波动在描述市场已实现的波动方面起着关键作用。