浙江大学概率统计学术报告(一)
报告人:周文心博士
University of California, San Diego (加州大学圣地亚哥分校)
时间2017年12月4日(星期一)2:00-3:00
地点:浙江大学玉泉校区逸夫工商楼四楼报告厅
题目: A Nonasymptotic Theory of Robustness
摘要: Massive data are often contaminated by outliers and heavy-tailed errors. In the presence of heavy-tailed data, finite sample properties of the least squares-based methods, typified by the sample mean, are suboptimal both theoretically and empirically. To address this challenge, we propose the adaptive Huber regression for robust estimation and inference. The key observation is that the robustification parameter should adapt to sample size, dimension and moments for optimal tradeoff between bias and robustness. For heavy-tailed data with bounded $(1+/delta)$-th moment for some $/delta>0$, we establish a sharp phase transition for robust estimation of regression parameters in both finite dimensional and high dimensional settings: when $/delta /geq 1$, the estimator achieves sub-Gaussian rate of convergence without sub-Gaussian assumptions, while only a slower rate is available in the regime $0
欢迎参加!
联系人: 苏中根 suzhonggen@zju.edu.cn, 87953676