人大經濟學院李勇教授學術論文在國際著名計量經濟學雜志(Journal of Econometrics)上正式發表
發文時間:2020-05-13

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人大經濟學院李勇教授學術論文在國際著名計量經濟學雜志(Journal of Econometrics)上正式發表。

該論文是與浙江大學經濟學院曾濤助理教授以及新加坡管理大學余俊教授共同合作。該篇論文基于著名的模型準則Deviance Information Criterion (DIC, Spiegelhalter et al. 2002), 提出了新的改進模型選擇方法。對于經濟金融中流行的隱變量模型,該論文首先提出適用于隱變量模型的積分信息準則。同時,針對錯誤設定的計量模型,文章又提出了一種可以在存在模型誤設情況下使用的穩健信息準則。

Journal of Econometrics

Deviance information criterion for latent variable models and misspecified models

Li,Yong, Yu,Jun and Zeng,tao.

2020,216(2),450-493.

Deviance information criterion for latent variable models and misspecified models

Abstract: Deviance information criterion (DIC) has been widely used for Bayesian model comparison, especially after Markov chain Monte Carlo (MCMC) is used to estimate candidate

models. This paper first studies the problem of using DIC to compare latent variable models when DIC is calculated from the conditional likelihood. In particular, it is shown that the conditional likelihood approach undermines theoretical underpinnings of DIC. A new version of DIC, namely DICL, is proposed to compare latent variable models. The large sample properties of DICL are studied. A frequentist justification of DICL is provided. Like AIC, DICL provides an asymptotically unbiased estimator to the expected Kullback-Leibler (KL) divergence between the DGP and a predictive distribution. Some popular algorithms, such as the EM, Kalman and particle filtering algorithms, are introduced to compute DICL for latent variable models. Moreover, this paper studies the problem of using DIC to compare misspecified models. A new version of DIC, namely DICM, is proposed and it can be regarded as a Bayesian version of TIC. A frequentist justification of DICM is provided under misspecification. DICL and DICM are illustrated using asset pricing models and stochastic volatility models

JEL classification

C11

C12

G12

Keywords

AIC

TIC

DIC

Latent variable models

Misspecified models

Markov chain Monte Carlo

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編輯:楊然;核稿:陸美賀