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中南财经政法大学吴远山教授学术报告

发布时间:2019-10-25文章来源: 浏览次数:

报告题目:Functional Martingale Residual Process for High-Dimensional Cox Regression With Model Averaging

报告人:吴远山

主办单位:统计学院

时间:2019112日上午10:00-11:00

地点:统计学院213会议室

Abstract: Regularization methods for the Cox proportional hazards regression with high-dimensional survival data have been studied  extensively in the literature. However, if the  models are misspecified, this would exert adverse effect on result in misleading statistical inference and prediction. To enhance the prediction accuracy for the relative risk and the survival probability,  we propose three model averaging approaches for the high-dimensional Cox proportional hazards regression. Based on the martingale residual process, we define the delete-one cross-validation process. Further, we propose three novel cross-validation functionals, including the end-time cross-validation, integrated cross-validation, and supremum cross-validation, to achieve more accurate prediction for the risk quantities  of clinical interest. The optimal weights for candidate models, without the constraint of summing up to one, can be obtained by minimizing these functionals, respectively. The proposed model averaging approach can attain the lowest possible prediction loss asymptotically. Furthermore, we develop a greedy model averaging algorithm to overcome the computational obstacle when the dimension is high. The performances of the proposed model averaging procedures are evaluated via extensive simulation studies, showing that our methods achieve superior prediction accuracy over the existing regularization method. As an illustration, we apply the proposed methods to the mantle cell lymphoma study.

报告人简介:吴远山,中南财经政法大学统计与数学学院教授、博士生导师。吴远山教授博士毕业于武汉大学,研究方向为高维数据分析; 生存分析。主持多项国家级和省部级科研项目。现已在统计方向顶级期刊Journal of the American Statistical AssociationBiometrikBiometrics等发表学术论文20余篇。


关闭 打印责任编辑:陈晓婷

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