贝叶斯DSGE模型的识别问题研究

On Identification of Bayesian DSGE Models

Journal of Business & Economic Statistics · 2013
被引 69
人大 AABS 4

中文导读

针对贝叶斯方法估计的DSGE模型,提出两个贝叶斯识别指标,通过比较后验分布与先验分布、以及后验精度随样本量的更新速度,来判断参数是否被识别,并用实证例子展示其有效性。

Abstract

This article is concerned with local identification of individual parameters of dynamic stochastic general equilibrium (DSGE) models estimated by Bayesian methods. Identification is often judged by a comparison of the posterior distribution of a parameter with its prior. However, these can differ even when the parameter is not identified. Instead, we propose two Bayesian indicators of identification. The first follows a suggestion by Poirier of comparing the posterior density of the parameter of interest with the posterior expectation of its prior conditional on the remaining parameters. The second examines the rate at which the posterior precision of the parameter gets updated with the sample size, using data simulated at the parameter point of interest for an increasing sequence of sample sizes ( T ). For identified parameters, the posterior precision increases at rate T . For parameters that are either unidentified or are weakly identified, the posterior precision may get updated but its rate of update will be slower than T . We use empirical examples to demonstrate that these methods are useful in practice. This article has online supplementary material.

贝叶斯DSGE模型局部识别后验精度弱识别