Online Robust Reduced-Rank Regression
编号:20 访问权限:仅限参会人 更新:2020-08-05 10:16:59 浏览:480次 口头报告

报告开始:2020年06月09日 15:40(Asia/Shanghai)

报告时间:20min

所在会场:[R] Regular Session [R04] Computational and Optimization Techniques for Multi-Channel Processing

视频 无权播放

提示:该报告下的文件权限为仅限参会人,您尚未登录,暂时无法查看。

摘要
The reduced-rank regression (RRR) model is widely used in data analytics where the response variables are believed to depend on a few linear combinations of the predictor variables, or when such linear combinations are of special interest. In this paper, we will address the RRR model estimation problem by considering two targets which are popular especially in big data applications: i) the estimation should be robust to heavy-tailed data distribution or outliers; ii) the estimation should be amenable to large-scale data sets or data streams. In this paper, we address the robustness via the robust maximum likelihood estimation procedure based on Cauchy distribution and a stochastic estimation procedure is further adopted to deal with the large-scale data sets. An efficient algorithm leveraging on the stochastic majorization minimization method is proposed for problem-solving. The proposed model and algorithm is validated numerically by comparing with the state-of-the-art methods.
关键词
Multivariate regression; low-rank; heavy-tails; outliers; stochastic optimization; majorization minimization
报告人
Yangzhuoran Yang
Monash University, Australia

稿件作者
Yangzhuoran Yang Monash University, Australia
Ziping Zhao ShanghaiTech University, China
发表评论
验证码 看不清楚,更换一张
全部评论
重要日期
  • 会议日期

    06月08日

    2020

    06月11日

    2020

  • 01月12日 2020

    初稿截稿日期

  • 04月15日 2020

    提前注册日期

  • 12月31日 2020

    注册截止日期

主办单位
IEEE Signal Processing Society
承办单位
Zhejiang University
移动端
在手机上打开
小程序
打开微信小程序
客服
扫码或点此咨询