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Regression Quantile Process Modelling based on Monotone B-spline
主讲:陈楠教授(新加坡国立大学)
举办时间:2015.2.5;10:00am    地点:N514

摘要: 

Quantile regression as an alternative to conditional mean regression (i.e., least square regression) is widely used in many areas. It can be used to study the covariate effects on the entire response distribution by fitting quantile regression models at multiple different quantiles or even fitting the entire regression quantile process. However, estimating the regression quantile process is inherently difficult because the induced conditional quantile function needs to be monotone at all covariate values. In this paper, we proposed a regression quantile process estimation method based on monotone B-splines. The proposed method can easily ensure the validity of the regression quantile process, and offers a concise framework for variable selection and adaptive complexity control. We thoroughly investigated the properties of the proposed procedure, both theoretically and numerically. We also use a case study on wind power generation to demonstrate its use and effectiveness of the proposed method. 

 

bio 

Nan Chen is an assistant professor in the Department of Industrial and Systems Engineering at the National University of Singapore. He obtained his B.S. degree in Automation from Tsinghua University and his M.S. degree in Computer Science, M.S. degree in Statistics, and Ph.D. degree in Industrial Engineering from the University of Wisconsin-Madison. His research interests include data analytics in manufacturing systems, prognostics and health management, data driven modeling and control of service systems. He is a member of INFORMS, IIE, and IEEE. 

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