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引用本文:������,��Т��. �������ݾ�ֵ��Э����������Ч�Ƚ�����[J]. 应用概率统计, 2018, 34(6): 598-612. DOI: 10.3969/j.issn.1001-4268.2018.06.005
作者姓名:������  ��Т��
作者单位:????????????, ???, 200093
摘    要:

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Efficient Robust Estimation of Mean and Covariance for Longitudinal Data
FAN Yali,XU Xiaolin. Efficient Robust Estimation of Mean and Covariance for Longitudinal Data[J]. Chinese Journal of Applied Probability and Statisties, 2018, 34(6): 598-612. DOI: 10.3969/j.issn.1001-4268.2018.06.005
Authors:FAN Yali  XU Xiaolin
Affiliation:College of Science, University of Shanghai for Science and Technology, Shanghai, 200093, China
Abstract:In this article, we develop efficient robust method for estimation of mean and covariance simultaneously for longitudinal data in regression model. Based on Cholesky decomposition for the covariance matrix and rewriting the regression model, we propose a weighted least square estimator, in which the weights are estimated under generalized empirical likelihood framework. The proposed estimator obtains high efficiency from the close connection to empirical likelihoodmethod, and achieves robustness by bounding the weighted sum of squared residuals. Simulation study shows that, compared to existing robust estimation methods for longitudinal data, the proposed estimator has relatively high efficiency and comparable robustness. In the end, the proposed method is used to analyse a real data set.
Keywords:efficient estimation  generalized empirical likelihood  robust  
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