数学系Seminar第1510期 A Neighborhood-Assisted Hotelling's t-Test for High-Dimensional Means

创建时间:  2017/10/12  龚惠英   浏览次数:   返回

报告主题:A Neighborhood-Assisted Hotelling's t-Test for High-Dimensional Means
报告人:Y.M. Qiu  教授(University of Nebraska Lincoln)
报告时间:2017年 10月13日(周五)9:30
报告地点:校本部G507
邀请人:王卿文
主办部门:8455新葡萄场网站数学系 
报告摘要:This talk aims to revive the classical Hotelling's t-test in the "large p, small n" paradigm. A Neighborhood-Assisted Hotelling's t-statistic is proposed to replace the inverse of sample covariance matrix in the classical Hotelling's statistic with a regularized covariance estimator. Utilizing a regression model, we establish its asymptotic normality under mild conditions. We show that the proposed test is able to match the performance of the population Hotelling's t-test with the known population covariance under certain conditions, and thus possesses certain optimality. Moreover, the test has the ability to attain its best power possible by adjusting a neighborhood size to unknown structures of population mean and covariance matrix. An optimal neighborhood size selection procedure is proposed to maximize the power of the proposed test via maximizing the signal-to-noise ratio. Simulation experiments and case studies are given to demonstrate the empirical performance of the proposed test.
 


欢迎教师、学生参加 !

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数学系Seminar第1510期 A Neighborhood-Assisted Hotelling's t-Test for High-Dimensional Means

创建时间:  2017/10/12  龚惠英   浏览次数:   返回

报告主题:A Neighborhood-Assisted Hotelling's t-Test for High-Dimensional Means
报告人:Y.M. Qiu  教授(University of Nebraska Lincoln)
报告时间:2017年 10月13日(周五)9:30
报告地点:校本部G507
邀请人:王卿文
主办部门:8455新葡萄场网站数学系 
报告摘要:This talk aims to revive the classical Hotelling's t-test in the "large p, small n" paradigm. A Neighborhood-Assisted Hotelling's t-statistic is proposed to replace the inverse of sample covariance matrix in the classical Hotelling's statistic with a regularized covariance estimator. Utilizing a regression model, we establish its asymptotic normality under mild conditions. We show that the proposed test is able to match the performance of the population Hotelling's t-test with the known population covariance under certain conditions, and thus possesses certain optimality. Moreover, the test has the ability to attain its best power possible by adjusting a neighborhood size to unknown structures of population mean and covariance matrix. An optimal neighborhood size selection procedure is proposed to maximize the power of the proposed test via maximizing the signal-to-noise ratio. Simulation experiments and case studies are given to demonstrate the empirical performance of the proposed test.
 


欢迎教师、学生参加 !

上一条:数学系Seminar第1511期 Multiple Relational Ranking in Tensor: Theory, Algorithms and Applications

下一条:数学系Seminar第1511期 Multiple Relational Ranking in Tensor: Theory, Algorithms and Applications