DSGE和DSGE- var模型的预测似然比较

A. Warne, G. Coenen, K. Christoffel
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引用次数: 23

摘要

本文展示了如何计算用贝叶斯方法估计的参数离散时间序列模型中观测变量的任意子集的超前h步预测似然。变量的子集可能在预测范围内变化,因此问题涵盖了作为特殊情况的固定子集的边际和联合预测可能性。基本思想是在计算似然函数时利用众所周知的技术来处理缺失数据,例如线性高斯模型的缺失观测一致卡尔曼滤波器,但它也扩展到非线性,非正态状态空间模型。预测似然可以通过蒙特卡罗积分计算,利用后验分布的结果。作为实证说明,我们使用欧元区数据,并将新区域范围模型(一个小型开放经济体DSGE模型)与DSGEVARs和简化形式的线性高斯模型的预测性能进行了比较。JEL分类:C11, C32, C52, C53, E37
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Predictive Likelihood Comparisons with DSGE and DSGE-VAR Models
This paper shows how to compute the h-step-ahead predictive likelihood for any subset of the observed variables in parametric discrete time series models estimated with Bayesian methods. The subset of variables may vary across forecast horizons and the problem thereby covers marginal and joint predictive likelihoods for a fixed subset as special cases. The basic idea is to utilize well-known techniques for handling missing data when computing the likelihood function, such as a missing observations consistent Kalman filter for linear Gaussian models, but it also extends to nonlinear, nonnormal state-space models. The predictive likelihood can thereafter be calculated via Monte Carlo integration using draws from the posterior distribution. As an empirical illustration, we use euro area data and compare the forecasting performance of the New Area-Wide Model, a small-open-economy DSGE model, to DSGEVARs, and to reduced-form linear Gaussian models. JEL Classification: C11, C32, C52, C53, E37
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