报告题目:Maximum empirical likelihood estimation for abundance in a closed population from capture-recapture datas
报告人:刘玉坤
主办单位:统计学院
时间:12月30日下午16:00-17:00
地点:科技楼二楼北会议室
Abstract:Capture-recapture experiments are widely used to collect the capture-recapture data needed to estimate the abundance of a closed population. To account for the observable heterogeneity in the capture probabilities, Alho (1990) proposed a semiparametric model in which the capture probabilities are modelled by a parametric model and the distribution of individual characteristics is left unspecied. A conditional likelihood method was then proposed to obtain point estimates and Wald-type condence intervals for the abundance. Empirical studies show that the small-sample distribution of the maximum conditional likelihood estimator is strongly skewed to the right, which may produce Wald-type condence intervals with lower limits that are less than the number of captured individuals or even negative. In this paper, we propose a full empirical likelihood approach based on Alho (1990)'s model. We show that the empirical likelihood ratio for the abundance is asymptotically chi-square with one degree of freedom. Simulation studies show that the empirical-likelihood-based method is superior to the conditional-likelihood-based method: the empirical likelihood ratio based condence interval has much better coverage, and the maximum empirical likelihood estimator has a smaller mean square error. We analyze three real data sets to illustrate the advantages of the proposed empirical likelihood method.
刘玉坤简介:华东师范大学金融与统计学院副教授、博士生导师,研究领域包括经验似然方法及其应用、小区域估计、生存分析、非参数和半参数回归。2009年6月在南开大学统计学系获得博士学位。2007年11月到2008年10月作为联合培养博士研究生访问加拿大英属哥伦比亚大学统计系。发表学术论文20余篇,其中在统计学顶级期刊The Annals of Statistics 发表论文两篇。