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国家自然科学基金(11101442)

作品数:4 被引量:3H指数:1
相关作者:崔霞更多>>
相关机构:广州大学更多>>
发文基金:国家自然科学基金上海市教育委员会重点学科基金更多>>
相关领域:理学更多>>

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Concave group methods for variable selection and estimation in high-dimensional varying coefficient models被引量:1
2014年
The varying-coefficient model is flexible and powerful for modeling the dynamic changes of regression coefficients.We study the problem of variable selection and estimation in this model in the sparse,highdimensional case.We develop a concave group selection approach for this problem using basis function expansion and study its theoretical and empirical properties.We also apply the group Lasso for variable selection and estimation in this model and study its properties.Under appropriate conditions,we show that the group least absolute shrinkage and selection operator(Lasso)selects a model whose dimension is comparable to the underlying model,regardless of the large number of unimportant variables.In order to improve the selection results,we show that the group minimax concave penalty(MCP)has the oracle selection property in the sense that it correctly selects important variables with probability converging to one under suitable conditions.By comparison,the group Lasso does not have the oracle selection property.In the simulation parts,we apply the group Lasso and the group MCP.At the same time,the two approaches are evaluated using simulation and demonstrated on a data example.
YANG GuangRenHUANG JianZHOU Yong
关键词:高维ORACLE变系数模型
Statistical Inference of Partially Specified Spatial Autoregressive Model被引量:2
2015年
This paper studies estimation of a partially specified spatial autoregressive model with heteroskedas- ticity error term. Under the assumption of exogenous regressors and exogenous spatial weighting matrix, the unknown parameter is estimated by applying the instrumental variable estimation. Under certain sufficient conditions, the proposed estimator for the finite dimensional parameters is shown to be root-n consistent and asymptotically normally distributed; The proposed estimator for the unknown function is shown to be consis- tent and asymptotically distributed as well, though at a rate slower than root-n. Consistent estimators for the asymptotic variance-covariance matrices of both estimators are provided. Monte Carlo simulations suggest that the proposed procedure has some practical value.
Yuan-qing ZHANGGuang-ren YANG
关键词:SPATIALSIEVE
基于非参数方法对随机微分方程的实证研究
2013年
首先介绍随机微分方程基本理论,然后基于我国上证综合指数的离散观测数据,运用非参数方法对随机微分方程的漂移项和扩散项进行估计.核函数的方法用来近似估计随机过程中期望函数,从而得到了漂移项和扩散项的非参数估计.相比于参数估计方法,非参数方法是一种使用尽可能少的假设但又能通过数据推测未知的数量特征的方法,它是一种无限维的方法,因而显得更为灵活、适应性更广和更具发展潜力.最后,运用统计软件R语言对其进行实证分析.
崔霞
关键词:随机微分方程非参数方法扩散项R语言
Estimated conditional score function for missing mechanism model with nonignorable nonresponse
2017年
Missing data mechanism often depends on the values of the responses,which leads to nonignorable nonresponses.In such a situation,inference based on approaches that ignore the missing data mechanism could not be valid.A crucial step is to model the nature of missingness.We specify a parametric model for missingness mechanism,and then propose a conditional score function approach for estimation.This approach imputes the score function by taking the conditional expectation of the score function for the missing data given the available information.Inference procedure is then followed by replacing unknown terms with the related nonparametric estimators based on the observed data.The proposed score function does not suffer from the non-identifiability problem,and the proposed estimator is shown to be consistent and asymptotically normal.We also construct a confidence region for the parameter of interest using empirical likelihood method.Simulation studies demonstrate that the proposed inference procedure performs well in many settings.We apply the proposed method to a data set from research in a growth hormone and exercise intervention study.
CUI XiaZHOU Yong
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