报告人:陈昱鑫 (美国宾夕法尼亚大学沃顿商学院)
邀请人:潘灯
报告时间:2022年12月2日(星期五)8:30-10:00
报告地点:腾讯会议:828 391 627
报告题目:Nonconvex Low-Rank Models
报告摘要:Many high-dimensional problems involve reconstruction of a low-rank matrix from incomplete and corrupted observations. Despite substantial progress in designing efficient estimation algorithms, it remains largely unclear how to assess the uncertainty of the obtained low-rank estimates, and how to construct valid yet short confidence intervals for the unknown low-rank matrix. In this talk, I will discuss how to perform inference and uncertainty quantification for two examples of low-rank models: (1) heteroskedastic PCA with missing data, and (2) noisy matrix completion. For both problems, we identify statistically efficient estimators that admit non-asymptotic distributional characterizations, which in turn enable optimal construction of confidence intervals for, say, the unseen entries of the low-rank matrix of interest. All this is accomplished by a powerful leave-one-out analysis framework that originated from probability and random matrix theory.
This is based on joint work with Yuling Yan, Cong Ma, and Jianqing Fan. See arXiv:2107.12365 and arXiv:1906.04159.
报告人简介:陈昱鑫,美国宾夕法尼亚大学沃顿商学院统计与数据科学系副教授,于斯坦福大学获得电气工程博士学位,并曾在斯坦福大学进行博士后研究。曾担任普林斯顿大学电子与计算机工程助理教授。获得Alfred P. Sloan Research Fellowship, the ICCM best paper award (gold medal), the AFOSR and ARO Young Investigator Awards, the Google Research Scholar Award等荣誉。他目前的研究方向包括高维统计、非凸优化和强化学习等。