随机波动大贝叶斯var的复合似然方法

J. Chan, Eric Eisenstat, Chenghan Hou, G. Koop
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引用次数: 14

摘要

由于计算考虑和过度参数化问题,在涉及100多个变量的大型向量自回归(var)中添加灵活形式的多变量随机波动是具有挑战性的。对于随机波动,现有的文献要么使用同方差模型,要么使用约束形式的较小模型。在这篇论文中,我们发展了多元随机波动的大var的复合似然方法。这包括估计大量的简约模型,然后对这些模型进行加权平均。我们讨论了选择权重的各种方案。在我们涉及多达196个变量的var的实证工作中,我们表明复合似然方法与使用小数据集的现有替代方法具有相似的特性,因为它们以灵活和现实的方式估计多变量随机波动,并且它们预测比较。在非常高维的var中,它们在计算上是可行的,而其他涉及随机波动的方法则不可行,并且比自然共轭先验均方差var产生更好的预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Composite Likelihood Methods for Large Bayesian VARs with Stochastic Volatility
Adding multivariate stochastic volatility of a ?exible form to large Vector Autoregressions (VARs) involving over a hundred variables has proved challenging due to computational considerations and over-parameterization concerns. The existing literature either works with homoskedastic models or smaller models with restrictive forms for the stochastic volatility. In this pa- per, we develop composite likelihood methods for large VARs with multivariate stochastic volatility. These involve estimating large numbers of parsimonious models and then taking a weighted average across these models. We discuss various schemes for choosing the weights. In our empirical work involving VARs of up to 196 variables, we show that composite likelihood methods have similar properties to existing alternatives used with small data sets in that they estimate the multivariate stochastic volatility in a ?exible and realistic manner and they forecast comparably. In very high dimensional VARs, they are computationally feasible where other approaches involving stochastic volatility are not and produce superior forecasts than natural conjugate prior homoskedastic VARs.
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