非平稳时间序列模型中后验密度、贝叶斯信息准则与似然原理的大样本性质

Large Sample Properties of Posterior Densities, Bayesian Information Criterion and the Likelihood Principle in Nonstationary Time Series Models

Econometrica · 1998
被引 70
人大 A+FT50ABS 4*

中文导读

给出了一套条件,用于证明非平稳时间序列中后验渐近正态性,并推广了贝叶斯信息准则(施瓦茨准则)到非平稳情形,同时指出最大似然估计的一致性足以保证后验渐近正态。

Abstract

Asymptotic normality of the posterior is a well understood result for dynamic as well as nondynamic models based on sets of abstract conditions whose actual applicability is hardly known especially for the case of nonstationarity. In this paper we provide a set of conditions by which we can relatively easily prove the asymptotic posterior normality under quite general situations of possible nonstationarity. This result reinforces and generalizes the point of Sims and Uhlig (1991) that inference based on the likelihood principle, explained by Berger and Wolpert (1988), will be unchanged regardless of whether the data are generated by a stationary process or by a unit root process. On the other hand, our conditions allow us to generalize the Bayesian information criterion known as the Schwarz criterion to the case of possible nonstationarity. In addition, we have shown that consistency of the maximum likelihood estimator, not the asymptotic normality of the estimator, with some minor additional assumptions is sufficient for asymptotic posterior normality.

渐近后验正态性贝叶斯信息准则似然原则非平稳时间序列