拉斯维加斯9888

  •  拉斯维加斯9888首页
  •  讲授项目
    本科 学术硕博 MBA EMBA 高层治理教育 管帐硕士 金融硕士 贸易分析硕士 数字教育 课程推荐
  •  北大主页
  •  用户登录
    教人员登录 学生登录 拉斯维加斯9888邮箱
  •  教怨匦聘  捐赠
English
中国·9888拉斯维加斯(股份)有限公司-官方网站
swtjyjjjlx

系列讲座

首页 > 系列讲座 > 正文

系列讲座

Sparse PCA: Optimal Rates and Adaptive Estimation

Statistics Seminar(2

功夫:2014-06-24

Statistics Seminar2014-12

Topic:Sparse PCA: Optimal Rates and Adaptive Estimation

Speaker:Tony Cai, The Wharton School,University of Pennsylvania

Time:Tuesday, 24 June, 14:00-15:00

Location:Room 217, Guanghua Building 2

Abstract:Principal component analysis (PCA) is one of the most commonly used statistical procedures with a wide range of applications. In this talk we consider both minimax and adaptive estimation of the principal subspace in the high dimensional setting. The optimal rates of convergence are established for estimating the principal subspace which are sharp with respect to all the parameters, thus providing a complete characterization of the difficulty of the estimation problem in term of the convergence rate. We then introduce an adaptive procedure for estimating the principal subspace which is fully data driven and can be computed efficiently. It is shown that the estimator attains the optimal rates of convergence simultaneously over a large collection of the parameter spaces. A key idea in our construction is a reduction scheme which reduces the sparse PCA problem to a high-dimensional multivariate regression problem. This method is potentially also useful for other related problems. This is joint work with Zongming Ma and Yihong Wu.

分享

010-62747206

拉斯维加斯98882号楼

?2017 拉斯维加斯9888 版权所有 京ICP备05065075-1
【网站地图】