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Variable selection for skew-normal mixture of joint location and scale models

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摘要 Although there are many papers on variable selection methods based on mean model in the nite mixture of regression models,little work has been done on how to select signi cant explanatory variables in the modeling of the variance parameter.In this paper,we propose and study a novel class of models:a skew-normal mixture of joint location and scale models to analyze the heteroscedastic skew-normal data coming from a heterogeneous population.The problem of variable selection for the proposed models is considered.In particular,a modi ed Expectation-Maximization(EM)algorithm for estimating the model parameters is developed.The consistency and the oracle property of the penalized estimators is established.Simulation studies are conducted to investigate the nite sample performance of the proposed methodolo-gies.An example is illustrated by the proposed methodologies.
出处 《Applied Mathematics(A Journal of Chinese Universities)》 SCIE CSCD 2021年第4期475-491,共17页 高校应用数学学报(英文版)(B辑)
基金 Supported by the National Natural Science Foundation of China(11861041).
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  • 1Jiang J.REML estimation: asymptotic behavior and related topics. The Annals of Statistics . 1996
  • 2Wang Y G,Zhao Y.A modified pseudolikelihood approach for analysis of longitudinal data. Biometrics . 2007
  • 3Murray Aitkin.Modelling variance heterogeneity in normal regreesion using GLIM. Applied Statistics . 1987
  • 4Akaike H.Information theory as an extension of the maximum likelihood principle. Second International Symposium on Information Theory . 1973
  • 5E.Candes,T.Tao.The Dantzig selector:statistical estimation when p is much large than n (withdiscussion). The Annals of Statistics . 2007
  • 6G. Claeskens,N. L. Hjort.The focused information criterion (with discussion). Journal of the American Statistical Association . 2003
  • 7M.Durban,I.D.Cuttie.Adjustment of the profile likelihood for a class of normal regression models. Scandinavian Journal of Statistics . 2000
  • 8B. Efron,T. Hastie,I. Johnstone,R. Tibshirani.Least Angle Regression. The Annals of Statistics . 2004
  • 9J. Q. Fan,R. Li.Variable selection via nonconcave penalized likelihood and its oracle properties. Journal of the American Statistical Association . 2001
  • 10Fan, J,Li, R.Statistical challenges with high dimensionality: feature selection in knowledge discovery. Proceedings of the International Congress of Mathematicians . 2006

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