Many popular specifications for Vector Autoregressions (VARs) with multivariate stochastic volatility are not invariant to the way the variables are ordered due to the use of a Cholesky decomposition for the error covariance matrix. We show that the order invariance problem in existing approaches is likely to become more serious in large VARs. We propose the use of a specification which avoids the use of this Cholesky decomposition. We show that the presence of multivariate stochastic volatility allows for identification of the proposed model and prove that it is invariant to ordering. We develop a Markov Chain Monte Carlo algorithm which allows for Bayesian estimation and prediction. In exercises involving artificial and real macroeconomic data, we demonstrate that the choice of variable ordering can have non-negligible effects on empirical results. In a macroeconomic forecasting exercise involving VARs with 20 variables we find that our order-invariant approach leads to the best forecasts and that some choices of variable ordering can lead to poor forecasts using a conventional, non-order invariant, approach.
翻译:由于对差错共变矩阵使用Ccholosky分解法,对变量的排序方式没有变化。我们表明,现有方法的顺序变化问题在大型VARs中可能变得更加严重。我们提议使用避免使用这种Cholesky分解法的规格。我们表明,多变量分解性波动的存在有助于确定拟议的模型,并证明它无法订购。我们开发了允许Bayesian估计和预测的Markov链条Monte Carlo算法。在涉及人造和真实宏观经济数据的练习中,我们证明变量排序的选择可能对实证结果产生不可忽略的影响。在涉及VARs的宏观经济预测活动中,我们发现,我们采用有20个变量的分解性预测法可以得出最佳预测结果,有些变量排序选择可能导致使用常规的、非变量的预测结果。