Non- and Semi-Parametric Approximation to Bayesian Computation

主讲人

JITI GAO教授(莫纳什大学)

简介

This paper proposes a general nonparametric regression approach to the estimation and computation of posterior means. We first consider the case where the samples can be independently drawn from both the likelihood function and the prior density. The samples and observations are then used to nonparametrically estimate posterior mean functions. The estimation method is also applied to estimate the posterior mean of the parameter-of-interest on a summary statistic. Both the asymptotic theory and the finite sample study show that the nonparametric estimate of this posterior mean is superior to existing estimates, including the conventional sample mean.<br /> <br /> This paper then proposes some non- and semi-parametric dimensional reduction methods to deal with the case where the dimensionality of either the regressors or the summary statistics is large. Meanwhile, the paper finally discusses the case where the samples are obtained from using an Markov chain Monte Carlo (MCMC) sampling algorithm. The asymptotic theory shows that the rate of convergence of the nonparametric estimate based on the MCMC samples is faster than that of the conventional nonparametric estimation method by an order of the number of the MCMC samples. The proposed models and estimation methods are evaluated through using both the simulated and real data examples. <div align="left" style="text-align: left; background: white"><span style="background: white; color: black">This is based on a piece of joint work with Han Hong</span></div>

时间

2014年9月23日(周四)下午16:30-18:00

地点

经济楼N座303室

讲座语言

English

主办单位

经济学院、王亚南经济研究院

承办单位

经济学院统计系

类型

系列讲座

联系人信息

主持人

专题网站

专题

主讲人简介

期数

厦门大学高级计量经济学与统计学系列讲座201

主讲人: JITI GAO教授(莫纳什大学)
简介:
系列讲座
时间: 2014年9月23日(周四)下午16:30-18:00
地点: 经济楼N座303室
期数: 厦门大学高级计量经济学与统计学系列讲座201
主办单位: 经济学院、王亚南经济研究院
承办单位: 经济学院统计系
类型: 系列讲座