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Activity Details


305 Tue, 8/6/2013, 8:30 AM - 10:20 AM CC-512h
Nonparametric Smoothing — Contributed Papers
Section on Nonparametric Statistics
Chair(s): Emily H. Griffith, North Carolina State University
8:35 AM Two-Stage Subsampling-Extrapolation Techniques in Bandwidth Selection Qing Wang, Williams College ; Bruce G. Lindsay, The Pennsylvania State University
8:50 AM Improving Sheather and Jones Bandwidth Selector for Difficult Densities in Kernel Density Estimation Jiangang Liao, Penn State
9:05 AM Testing for the Covariate Effect in the Fully Nonparametric ANCOVA Shu-Min Liao, Amherst College ; Michael G. Akritas, The Pennsylvania State University
9:20 AM Shape-Constrained Nonparametric Estimators of the Baseline Distribution in the Cox Proportional Hazards Model Gabriela Nane ; Hendrik Lopuhaa, Delft University of Technology
9:35 AM Kernel Estimation of a Quantile Partially Additive Linear Regression Model Dawit Zerom, California State University at Fullerton
9:50 AM Parameterization and Smoothing Using Bernstein Polynomials: Another Look at Beta Mixture Zhong Guan, Indiana University South Bend
10:05 AM New Kernel Density Estimates and Their Empirical Likelihood Versions and Applications ningning wang ; Ibrahim Ahmad, Oklahoma state university



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