Multivariate Stochastic Volatility with Co-Heteroscedasticity

Joshua Chan, Arnaud Doucet, Roberto León-González, Rodney W. Strachan
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Abstract

A new methodology that decomposes shocks into homoscedastic and heteroscedastic components is developed. This specification implies there exist linear combinations of heteroscedastic variables that eliminate heteroscedasticity; a property known as co-heteroscedasticity. The heteroscedastic part of the model uses a multivariate stochastic volatility inverse Wishart process. The resulting model is invariant to the ordering of the variables, which is shown to be important for volatility estimation. By incorporating testable co-heteroscedasticity restrictions, the specification allows estimation in moderately high-dimensions. The computational strategy uses a novel particle filter algorithm, a reparameterization that substantially improves algorithmic convergence and an alternating-order particle Gibbs that reduces the amount of particles needed for accurate estimation. An empirical application to a large Vector Autoregression (VAR) is provided, finding strong evidence for co-heteroscedasticity and that the new method outperforms some previously proposed methods in terms of forecasting at all horizons. It is also found that the structural monetary shock is 98.8 % homoscedastic, and that investment and the SP 500 index are nearly 100 % determined by fat tail heteroscedastic shocks. A Monte Carlo experiment illustrates that the new method estimates well the characteristics of approximate factor models with heteroscedastic errors.
具有共异方差性的多元随机波动性
本文提出了一种新方法,将冲击分解为同方差和异方差两个部分。这种规范意味着存在消除异方差性的异方差变量线性组合;这种特性被称为共异方差性。该模型的异方差部分使用了多元随机波动逆 Wishart 过程。由此得到的模型对变量的排序具有不变性,这对波动率估计非常重要。通过加入可检验的共异速限制,该规范允许在中等高维度上进行估计。计算策略采用了一种新颖的粒子滤波算法、一种可大幅提高算法收敛性的重参数化方法和一种交替阶粒子吉布斯方法,后者可减少精确估算所需的粒子数量。对一个大型向量自回归(VAR)进行了实证应用,发现了共异方差的有力证据,并发现新方法在所有期限的预测方面都优于之前提出的一些方法。研究还发现,结构性货币冲击具有 98.8% 的同方差性,而投资和 SP 500 指数几乎 100% 由胖尾异方差冲击决定。蒙特卡罗实验表明,新方法能很好地估计具有异方差误差的近似因子模型的特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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