Zuofeng Shang, Ph.D. - Publications
Affiliations: | 2011 | University of Wisconsin, Madison, Madison, WI |
Area:
Statistics, Environmental Sciences, Plant Culture AgricultureYear | Citation | Score | |||
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2020 | Liu R, Shang Z, Zhang Y, Zhou Q. Identification and estimation in panel models with overspecified number of groups Journal of Econometrics. 215: 574-590. DOI: 10.1016/J.Jeconom.2019.09.008 | 0.328 | |||
2019 | Xu G, Shang Z, Cheng G. Distributed Generalized Cross-Validation for Divide-and-Conquer Kernel Ridge Regression and Its Asymptotic Optimality Journal of Computational and Graphical Statistics. 28: 891-908. DOI: 10.1080/10618600.2019.1586714 | 0.346 | |||
2015 | Cheng G, Zhang HH, Shang Z. Sparse and Efficient Estimation for Partial Spline Models with Increasing Dimension. Annals of the Institute of Statistical Mathematics. 67: 93-127. PMID 25620808 DOI: 10.1007/S10463-013-0440-Y | 0.385 | |||
2015 | Shang Z, Cheng G. Nonparametric inference in generalized functional linear models Annals of Statistics. 43: 1742-1773. DOI: 10.1214/15-Aos1322 | 0.373 | |||
2015 | Cheng G, Shang Z. Joint asymptotics for semi-nonparametric regression models with partially linear structure Annals of Statistics. 43: 1351-1390. DOI: 10.1214/15-Aos1313 | 0.392 | |||
2014 | Shang Z, Li P. High-dimensional Bayesian inference in nonparametric additive models Electronic Journal of Statistics. 8: 2804-2847. DOI: 10.1214/14-Ejs963 | 0.419 | |||
2013 | Shang Z, Cheng G. Local and global asymptotic inference in smoothing spline models Annals of Statistics. 41: 2608-2638. DOI: 10.1214/13-Aos1164 | 0.379 | |||
2012 | Shang Z. On latent process models in multi-dimensional space Statistics and Probability Letters. 82: 1259-1266. DOI: 10.1016/J.Spl.2012.03.022 | 0.41 | |||
2012 | Shang Z, Clayton MK. An application of Bayesian variable selection to spatial concurrent linear models Environmental and Ecological Statistics. 19: 521-544. DOI: 10.1007/S10651-012-0199-Y | 0.509 | |||
2011 | Shang Z, Clayton MK. Consistency of Bayesian linear model selection with a growing number of parameters Journal of Statistical Planning and Inference. 141: 3463-3474. DOI: 10.1016/J.Jspi.2011.05.002 | 0.517 | |||
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