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STRONG CONVERGENCE RATES OF SEVERAL ESTIMATORS IN SEMIPARAMETRIC VARYING-COEFFICIENT PARTIALLY LINEAR MODELS 被引量:1
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作者 周勇 尤进红 王晓婧 《Acta Mathematica Scientia》 SCIE CSCD 2009年第5期1113-1127,共15页
This article is concerned with the estimating problem of semiparametric varyingcoefficient partially linear regression models. By combining the local polynomial and least squares procedures Fan and Huang (2005) prop... This article is concerned with the estimating problem of semiparametric varyingcoefficient partially linear regression models. By combining the local polynomial and least squares procedures Fan and Huang (2005) proposed a profile least squares estimator for the parametric component and established its asymptotic normality. We further show that the profile least squares estimator can achieve the law of iterated logarithm. Moreover, we study the estimators of the functions characterizing the non-linear part as well as the error variance. The strong convergence rate and the law of iterated logarithm are derived for them, respectively. 展开更多
关键词 partially linear regression model varying-coefficient profile leastsquares error variance strong convergence rate law of iterated logarithm
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Variable Selection for Semiparametric Varying-Coefficient Partially Linear Models with Missing Response at Random 被引量:9
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作者 Pei Xin ZHAO Liu Gen XUE 《Acta Mathematica Sinica,English Series》 SCIE CSCD 2011年第11期2205-2216,共12页
In this paper, we present a variable selection procedure by combining basis function approximations with penalized estimating equations for semiparametric varying-coefficient partially linear models with missing respo... In this paper, we present a variable selection procedure by combining basis function approximations with penalized estimating equations for semiparametric varying-coefficient partially linear models with missing response at random. The proposed procedure simultaneously selects significant variables in parametric components and nonparametric components. With appropriate selection of the tuning parameters, we establish the consistency of the variable selection procedure and the convergence rate of the regularized estimators. A simulation study is undertaken to assess the finite sample performance of the proposed variable selection procedure. 展开更多
关键词 semiparametric varying-coefficient partially linear model variable selection SCAD missing data
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Empirical Likelihood Based Diagnostics for Heteroscedasticity in Semiparametric Varying-Coefficient Partially Linear Models with Missing Responses 被引量:2
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作者 LIU Feng GAO Weiqing +2 位作者 HE Jing FU Xinwei KANG Xinmei 《Journal of Systems Science & Complexity》 SCIE EI CSCD 2021年第3期1175-1188,共14页
This paper proposes an empirical likelihood based diagnostic technique for heteroscedasticity for semiparametric varying-coefficient partially linear models with missing responses. Firstly, the authors complement the ... This paper proposes an empirical likelihood based diagnostic technique for heteroscedasticity for semiparametric varying-coefficient partially linear models with missing responses. Firstly, the authors complement the missing response variables by regression method. Then, the empirical likelihood method is introduced to study the heteroscedasticity of the semiparametric varying-coefficient partially linear models with complete-case data. Finally, the authors obtain the finite sample property by numerical simulation. 展开更多
关键词 Empirical likelihood ratio HETEROSCEDASTICITY response missing with MAR semiparametric varying-coefficient partially linear models
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Quantile Regression of Ultra-high Dimensional Partially Linear Varying-coefficient Model with Missing Observations
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作者 Bao Hua Wang Han Ying Liang 《Acta Mathematica Sinica,English Series》 SCIE CSCD 2023年第9期1701-1726,共26页
In this paper,we focus on the partially linear varying-coefficient quantile regression with missing observations under ultra-high dimension,where the missing observations include either responses or covariates or the ... In this paper,we focus on the partially linear varying-coefficient quantile regression with missing observations under ultra-high dimension,where the missing observations include either responses or covariates or the responses and part of the covariates are missing at random,and the ultra-high dimension implies that the dimension of parameter is much larger than sample size.Based on the B-spline method for the varying coefficient functions,we study the consistency of the oracle estimator which is obtained only using active covariates whose coefficients are nonzero.At the same time,we discuss the asymptotic normality of the oracle estimator for the linear parameter.Note that the active covariates are unknown in practice,non-convex penalized estimator is investigated for simultaneous variable selection and estimation,whose oracle property is also established.Finite sample behavior of the proposed methods is investigated via simulations and real data analysis. 展开更多
关键词 Missing observation oracle property partially linear varying-coefficient model quantile regression ultra-high dimension
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Testing Serial Correlation in Semiparametric Varying-Coefficient Partially Linear EV Models
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作者 Xue-mei Hu Zhi-zhong Wang Feng Liu 《Acta Mathematicae Applicatae Sinica》 SCIE CSCD 2008年第1期99-116,共18页
This paper studies estimation and serial correlation test of a semiparametric varying-coefficient partially linear EV model of the form Y = X^Tβ +Z^Tα(T) +ε,ξ = X + η with the identifying condition E[(ε,... This paper studies estimation and serial correlation test of a semiparametric varying-coefficient partially linear EV model of the form Y = X^Tβ +Z^Tα(T) +ε,ξ = X + η with the identifying condition E[(ε,η^T)^T] =0, Cov[(ε,η^T)^T] = σ^2Ip+1. The estimators of interested regression parameters /3 , and the model error variance σ2, as well as the nonparametric components α(T), are constructed. Under some regular conditions, we show that the estimators of the unknown vector β and the unknown parameter σ2 are strongly consistent and asymptotically normal and that the estimator of α(T) achieves the optimal strong convergence rate of the usual nonparametric regression. Based on these estimators and asymptotic properties, we propose the VN,p test statistic and empirical log-likelihood ratio statistic for testing serial correlation in the model. The proposed statistics are shown to have asymptotic normal or chi-square distributions under the null hypothesis of no serial correlation. Some simulation studies are conducted to illustrate the finite sample performance of the proposed tests. 展开更多
关键词 varying-coefficient model partial linear EV model the generalized least squares estimation serial correlation empirical likelihood
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Shrinkage Estimation of Semiparametric Model with Missing Responses for Cluster Data
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作者 Mingxing Zhang Jiannan Qiao +1 位作者 Huawei Yang Zixin Liu 《Open Journal of Statistics》 2015年第7期768-776,共9页
This paper simultaneously investigates variable selection and imputation estimation of semiparametric partially linear varying-coefficient model in that case where there exist missing responses for cluster data. As is... This paper simultaneously investigates variable selection and imputation estimation of semiparametric partially linear varying-coefficient model in that case where there exist missing responses for cluster data. As is well known, commonly used approach to deal with missing data is complete-case data. Combined the idea of complete-case data with a discussion of shrinkage estimation is made on different cluster. In order to avoid the biased results as well as improve the estimation efficiency, this article introduces Group Least Absolute Shrinkage and Selection Operator (Group Lasso) to semiparametric model. That is to say, the method combines the approach of local polynomial smoothing and the Least Absolute Shrinkage and Selection Operator. In that case, it can conduct nonparametric estimation and variable selection in a computationally efficient manner. According to the same criterion, the parametric estimators are also obtained. Additionally, for each cluster, the nonparametric and parametric estimators are derived, and then compute the weighted average per cluster as finally estimators. Moreover, the large sample properties of estimators are also derived respectively. 展开更多
关键词 semiparametric partially linear varying-coefficient model MISSING RESPONSES CLUSTER DATA Group Lasso
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Asymptotic Properties in Semiparametric Partially Linear Regression Models for Functional Data 被引量:1
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作者 Tao ZHANG 《Acta Mathematicae Applicatae Sinica》 SCIE CSCD 2013年第3期631-644,共14页
We consider the semiparametric partially linear regression models with mean function XTβ + g(z), where X and z are functional data. The new estimators of β and g(z) are presented and some asymptotic results are... We consider the semiparametric partially linear regression models with mean function XTβ + g(z), where X and z are functional data. The new estimators of β and g(z) are presented and some asymptotic results are given. The strong convergence rates of the proposed estimators are obtained. In our estimation, the observation number of each subject will be completely flexible. Some simulation study is conducted to investigate the finite sample performance of the proposed estimators. 展开更多
关键词 longitudinal data functional data semiparametric partially linear regression models asymptotic properties
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Iterative Weighted Semiparametric Least Squares Estimation in Repeated Measurement Partially Linear Regression Models
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作者 GemaiChen Jin-hongYou 《Acta Mathematicae Applicatae Sinica》 SCIE CSCD 2005年第2期177-192,共16页
Consider a repeated measurement partially linear regression model with anunknown vector parameter β_1, an unknown function g(·), and unknown heteroscedastic errorvariances. In order to improve the semiparametric... Consider a repeated measurement partially linear regression model with anunknown vector parameter β_1, an unknown function g(·), and unknown heteroscedastic errorvariances. In order to improve the semiparametric generalized least squares estimator (SGLSE) of ,we propose an iterative weighted semiparametric least squares estimator (IWSLSE) and show that itimproves upon the SGLSE in terms of asymptotic covariance matrix. An adaptive procedure is given todetermine the number of iterations. We also show that when the number of replicates is less than orequal to two, the IWSLSE can not improve upon the SGLSE. These results are generalizations of thosein [2] to the case of semiparametric regressions. 展开更多
关键词 partially linear regression model heteroscedastic error variance iterativeweighted semiparametric least squares estimator (IWSLSE) asymptotic normality
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Efficient Estimation of a Varying-coefficient Partially Linear Binary Regression Model
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作者 TaoHU Heng Jian CUI 《Acta Mathematica Sinica,English Series》 SCIE CSCD 2010年第11期2179-2190,共12页
This article considers a semiparametric varying-coefficient partially linear binary regression model. The semiparametric varying-coefficient partially linear regression binary model which is a generalization of binary... This article considers a semiparametric varying-coefficient partially linear binary regression model. The semiparametric varying-coefficient partially linear regression binary model which is a generalization of binary regression model and varying-coefficient regression model that allows one to explore the possibly nonlinear effect of a certain covariate on the response variable. A Sieve maximum likelihood estimation method is proposed and the asymptotic properties of the proposed estimators are discussed. One of our main objects is to estimate nonparametric component and the unknowen parameters simultaneously. It is easier to compute, and the required computation burden is much less than that of the existing two-stage estimation method. Under some mild conditions, the estimators are shown to be strongly consistent. The convergence rate of the estimator for the unknown smooth function is obtained, and the estimator for the unknown parameter is shown to be asymptotically efficient and normally distributed. Simulation studies are carried out to investigate the performance of the proposed method. 展开更多
关键词 partially linear model varying-coefficient binary regression asymptotically efficient estimator sieve MLE
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Inference on Varying-Coefficient Partially Linear Regression Model
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作者 Jing-yan FENG Ri-quan ZHANG Yi-qiang LU 《Acta Mathematicae Applicatae Sinica》 SCIE CSCD 2015年第1期139-156,共18页
The varying-coefficient partially linear regression model is proposed by combining nonparametric and varying-coefficient regression procedures. Wong, et al. (2008) proposed the model and gave its estimation by the l... The varying-coefficient partially linear regression model is proposed by combining nonparametric and varying-coefficient regression procedures. Wong, et al. (2008) proposed the model and gave its estimation by the local linear method. In this paper its inference is addressed. Based on these estimates, the generalized like- lihood ratio test is established. Under the null hypotheses the normalized test statistic follows a x2-distribution asymptotically, with the scale constant and the degrees of freedom being independent of the nuisance param- eters. This is the Wilks phenomenon. Furthermore its asymptotic power is also derived, which achieves the optimal rate of convergence for nonparametric hypotheses testing. A simulation and a real example are used to evaluate the performances of the testing procedures empirically. 展开更多
关键词 asymptotic normality varying-coefficient partially linear regression model generalized likelihoodratio test Wilks phenomenon xi-distribution.
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Robust estimation for partially linear models with large-dimensional covariates 被引量:5
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作者 ZHU LiPing LI RunZe CUI HengJian 《Science China Mathematics》 SCIE 2013年第10期2069-2088,共20页
We are concerned with robust estimation procedures to estimate the parameters in partially linear models with large-dimensional covariates. To enhance the interpretability, we suggest implementing a nonconcave regular... We are concerned with robust estimation procedures to estimate the parameters in partially linear models with large-dimensional covariates. To enhance the interpretability, we suggest implementing a nonconcave regularization method in the robust estimation procedure to select important covariates from the linear component. We establish the consistency for both the linear and the nonlinear components when the covariate dimension diverges at the rate of o(n1/2), where n is the sample size. We show that the robust estimate of linear component performs asymptotically as well as its oracle counterpart which assumes the baseline function and the unimportant covariates were known a priori. With a consistent estimator of the linear component, we estimate the nonparametric component by a robust local linear regression. It is proved that the robust estimate of nonlinear component performs asymptotically as well as if the linear component were known in advance.Comprehensive simulation studies are carried out and an application is presented to examine the fnite-sample performance of the proposed procedures. 展开更多
关键词 部分线性模型 鲁棒估计 协变量 ORACLE 稳健估计 线性组件 参数估计 样本大小
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Delete-group Jackknife Estimate in Partially Linear Regression Models with Heteroscedasticity 被引量:1
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作者 Jin-hong You Gemai Chen 《Acta Mathematicae Applicatae Sinica》 SCIE CSCD 2003年第4期599-610,共12页
Consider a partially linear regression model with an unknown vector parameter , an unknown function g(·), and unknown heteroscedastic error variances. Chen, You<SUP>[23]</SUP> proposed a semiparametri... Consider a partially linear regression model with an unknown vector parameter , an unknown function g(·), and unknown heteroscedastic error variances. Chen, You<SUP>[23]</SUP> proposed a semiparametric generalized least squares estimator (SGLSE) for , which takes the heteroscedasticity into account to increase efficiency. For inference based on this SGLSE, it is necessary to construct a consistent estimator for its asymptotic covariance matrix. However, when there exists within-group correlation, the traditional delta method and the delete-1 jackknife estimation fail to offer such a consistent estimator. In this paper, by deleting grouped partial residuals a delete-group jackknife method is examined. It is shown that the delete-group jackknife method indeed can provide a consistent estimator for the asymptotic covariance matrix in the presence of within-group correlations. This result is an extension of that in [21]. 展开更多
关键词 partially linear regression model asymptotic variance HETEROSCEDASTICITY delete-group jackknife semiparametric generalized least squares estimator
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Truncated Estimator of Asymptotic Covariance Matrix in Partially Linear Models with Heteroscedastic Errors
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作者 Yan-meng Zhao Jin-hong You Yong Zhou 《Acta Mathematicae Applicatae Sinica》 SCIE CSCD 2006年第4期565-574,共10页
有 heteroscedastic 或连续地相关的错误的一个部分线性的回归模型这里被学习。参量的最少的广场评价(SLSE ) 被需要以便使用半使统计推理成为 asymptoticcovariance 矩阵的一个一致评估者,是众所周知的。当错误是 heteroscedastic 或... 有 heteroscedastic 或连续地相关的错误的一个部分线性的回归模型这里被学习。参量的最少的广场评价(SLSE ) 被需要以便使用半使统计推理成为 asymptoticcovariance 矩阵的一个一致评估者,是众所周知的。当错误是 heteroscedastic 或连续地相关时, asymptotic 协变性矩阵的传统的基于剩余的评估者不是一致的。在这篇论文,我们由截断建议一个新评估者,它是穿怀特衣服的过程的延期。当截断的参数与某率收敛到无穷时,这个评估者被显示一致。 展开更多
关键词 部分线性消退模型 异方差 连续相关性 准参最小平方估计 渐近协方差矩阵
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Joint semiparametric mean-covariance model in longitudinal study 被引量:3
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作者 MAO Jie ZHU ZhongYi 《Science China Mathematics》 SCIE 2011年第1期145-164,共20页
Semiparametric regression models and estimating covariance functions are very useful for longitudinal study. To heed the positive-definiteness constraint, we adopt the modified Cholesky decomposition approach to decom... Semiparametric regression models and estimating covariance functions are very useful for longitudinal study. To heed the positive-definiteness constraint, we adopt the modified Cholesky decomposition approach to decompose the covariance structure. Then the covariance structure is fitted by a semiparametric model by imposing parametric within-subject correlation while allowing the nonparametric variation function. We estimate regression functions by using the local linear technique and propose generalized estimating equations for the mean and correlation parameter. Kernel estimators are developed for the estimation of the nonparametric variation function. Asymptotic normality of the the resulting estimators is established. Finally, the simulation study and the real data analysis are used to illustrate the proposed approach. 展开更多
关键词 半参数回归模型 协方差函数 平均值 Cholesky分解法 函数估计 协方差结构 半参数模型 参数拟合
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部分线性模型的统一估计的强相合性 被引量:2
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作者 张涛 万艳玲 曹石云 《广西科技大学学报》 CAS 2014年第4期23-29,共7页
在纵向数据研究中,要求对个体的观测为稀疏的,在函数型数据研究中,要求对个体的观测为稠密的,为了抛弃这些限制性的条件,考虑部分线性模型,对函数型数据和纵向数据的半参数部分线性模型提出了一种统一的估计方法,并证明了估计的强相合性... 在纵向数据研究中,要求对个体的观测为稀疏的,在函数型数据研究中,要求对个体的观测为稠密的,为了抛弃这些限制性的条件,考虑部分线性模型,对函数型数据和纵向数据的半参数部分线性模型提出了一种统一的估计方法,并证明了估计的强相合性,在提出的估计中,个体的观测数目是完全灵活的,克服了以前方法的缺点. 展开更多
关键词 纵向数据 函数型数据 部分线性模型 强相合性
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变系数部分线性模型的拟合优度检验 被引量:3
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作者 赵培信 薛留根 《应用数学》 CSCD 北大核心 2008年第4期695-702,共8页
本文考虑变系数部分线性模型的拟合优度检验问题.基于Profile经验似然方法,构造了参数部分和非参数部分的经验似然比检验统计量.并证明了其满足Wilks'现象,进而得到了一定置信水平的拒绝域.最后通过数据模拟,讨论了其检验功效.
关键词 变系数部分线性模型 经验似然 拟合优度检验
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再论半参数部分线性模型在居民消费结构分析中的应用 被引量:4
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作者 梁华 熊健 《数理统计与管理》 CSSCI 北大核心 1995年第6期9-15,共7页
本文利用半参数部分线性模型的最新结果建立新的消费结构分析框架,然后与线性模型的分析结果进行比较。结果表明前者的预测值与误差效果都比后者要好。
关键词 线性模型 消费结构 国民生产总值 居民
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半参数部分线性模型在小麦抗倒伏性分析中的应用 被引量:1
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作者 刘锋 徐振枢 王利兵 《重庆理工大学学报(自然科学)》 CAS 2013年第3期122-125,共4页
为了对小麦抗倒伏性进行更加精确地研究,将部分线性模型应用到小麦抗倒伏性模拟中,得到了小麦机械强度与小麦各指标之间的线性关系,以及小麦抗倒伏性影响指标。数据分析结果表明,矮抗58品种的小麦抗倒伏性最强。
关键词 抗倒伏性 机械强度 部分线性模型
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基于半参数变系数部分线性模型的小麦抗倒伏性分析 被引量:1
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作者 刘锋 王利兵 徐振枢 《重庆理工大学学报(自然科学)》 CAS 2013年第4期121-126,共6页
应用统计的方法在小麦的抗倒伏指数与自身的各指标间建立了一个半参数变系数部分线性模型,对小麦的倒伏情况进行预测。结果表明:该方法可有效预测小麦的抗倒伏性,对提高小麦的产量有一定帮助。
关键词 抗倒伏性 机械强度 半参数变系数部分线性模型
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半参数变系数部分线性EV模型的惩罚经验似然 被引量:1
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作者 陈夏 郭韫华 何军伟 《纯粹数学与应用数学》 2020年第3期253-269,共17页
研究了半参数变系数部分线性测量误差模型的惩罚经验似然问题.首先基于无偏辅助函数,构造了惩罚经验对数似然函数,证明了所得惩罚经验似然估计具有Oracle性质.其次,考虑了关于参数的假设检验问题,给出了检验统计量及其渐近分布.最后通... 研究了半参数变系数部分线性测量误差模型的惩罚经验似然问题.首先基于无偏辅助函数,构造了惩罚经验对数似然函数,证明了所得惩罚经验似然估计具有Oracle性质.其次,考虑了关于参数的假设检验问题,给出了检验统计量及其渐近分布.最后通过实验模拟和实例分析验证了所提方法的有限样本性质. 展开更多
关键词 半参数变系数部分线性模型 测量误差 变量选择 惩罚经验似然
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