针对抽样调查中抽样设计、估计量设计及方差估计等方面存在的关键理论性问题,运用数理统计方法,从抽样调查的两个主要环节,即抽样设计和抽样估计环节进行基础理论的综述研究,以S(a|¨)rndal et al.(1992)等成果中研究的抽样设计、...针对抽样调查中抽样设计、估计量设计及方差估计等方面存在的关键理论性问题,运用数理统计方法,从抽样调查的两个主要环节,即抽样设计和抽样估计环节进行基础理论的综述研究,以S(a|¨)rndal et al.(1992)等成果中研究的抽样设计、示性变量、包含概率、π估计量等核心概念为基础,并引入超总体模型这一研究工具进行模型辅助估计,最终归纳整理出一套现代抽样调查的基础理论体系,为后续更好地开展抽样调查基础理论和应用研究奠定方法论基础。这套基础理论体系具有开阔性、统一性和易于推广性等一系列优势,对于抽样调查从设计到估计的全过程起着基础性作用。展开更多
In this paper, the performance of existing biased estimators (Ridge Estimator (RE), Almost Unbiased Ridge Estimator (AURE), Liu Estimator (LE), Almost Unbiased Liu Estimator (AULE), Principal Component Regression Esti...In this paper, the performance of existing biased estimators (Ridge Estimator (RE), Almost Unbiased Ridge Estimator (AURE), Liu Estimator (LE), Almost Unbiased Liu Estimator (AULE), Principal Component Regression Estimator (PCRE), r-k class estimator and r-d class estimator) and the respective predictors were considered in a misspecified linear regression model when there exists multicollinearity among explanatory variables. A generalized form was used to compare these estimators and predictors in the mean square error sense. Further, theoretical findings were established using mean square error matrix and scalar mean square error. Finally, a numerical example and a Monte Carlo simulation study were done to illustrate the theoretical findings. The simulation study revealed that LE and RE outperform the other estimators when weak multicollinearity exists, and RE, r-k class and r-d class estimators outperform the other estimators when moderated and high multicollinearity exist for certain values of shrinkage parameters, respectively. The predictors based on the LE and RE are always superior to the other predictors for certain values of shrinkage parameters.展开更多
In this paper, we introduce a generalized Liu estimator and jackknifed Liu estimator in a linear regression model with correlated or heteroscedastic errors. Therefore, we extend the Liu estimator. Under the mean squar...In this paper, we introduce a generalized Liu estimator and jackknifed Liu estimator in a linear regression model with correlated or heteroscedastic errors. Therefore, we extend the Liu estimator. Under the mean square error(MSE), the jackknifed estimator is superior to the Liu estimator and the jackknifed ridge estimator. We also give a method to select the biasing parameter for d. Furthermore, a numerical example is given to illustvate these theoretical results.展开更多
Longitudinal trends of observations can be estimated using the generalized multivariate analysis of variance (GMANOVA) model proposed by [10]. In the present paper, we consider estimating the trends nonparametrically ...Longitudinal trends of observations can be estimated using the generalized multivariate analysis of variance (GMANOVA) model proposed by [10]. In the present paper, we consider estimating the trends nonparametrically using known basis functions. Then, as in nonparametric regression, an overfitting problem occurs. [13] showed that the GMANOVA model is equivalent to the varying coefficient model with non-longitudinal covariates. Hence, as in the case of the ordinary linear regression model, when the number of covariates becomes large, the estimator of the varying coefficient becomes unstable. In the present paper, we avoid the overfitting problem and the instability problem by applying the concept behind penalized smoothing spline regression and multivariate generalized ridge regression. In addition, we propose two criteria to optimize hyper parameters, namely, a smoothing parameter and ridge parameters. Finally, we compare the ordinary least square estimator and the new estimator.展开更多
本文我们提出了使用调查数据中完全辅助信息的模型校正K-L相对熵最小化方法.在估计有限总体均值时我们的估计渐近等价于MC估计(Wu and Sitter(2001)).我们方法一个有吸引力的优点是,导出的权具有特征:pi>0和■pi=0 .这使得可把此...本文我们提出了使用调查数据中完全辅助信息的模型校正K-L相对熵最小化方法.在估计有限总体均值时我们的估计渐近等价于MC估计(Wu and Sitter(2001)).我们方法一个有吸引力的优点是,导出的权具有特征:pi>0和■pi=0 .这使得可把此方法应用于估计分布函数和分位数.导出的分布函数估计量FMKL(y)渐近等价于广义回归估计,且本身是一分函数布.展开更多
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
文摘针对抽样调查中抽样设计、估计量设计及方差估计等方面存在的关键理论性问题,运用数理统计方法,从抽样调查的两个主要环节,即抽样设计和抽样估计环节进行基础理论的综述研究,以S(a|¨)rndal et al.(1992)等成果中研究的抽样设计、示性变量、包含概率、π估计量等核心概念为基础,并引入超总体模型这一研究工具进行模型辅助估计,最终归纳整理出一套现代抽样调查的基础理论体系,为后续更好地开展抽样调查基础理论和应用研究奠定方法论基础。这套基础理论体系具有开阔性、统一性和易于推广性等一系列优势,对于抽样调查从设计到估计的全过程起着基础性作用。
文摘In this paper, the performance of existing biased estimators (Ridge Estimator (RE), Almost Unbiased Ridge Estimator (AURE), Liu Estimator (LE), Almost Unbiased Liu Estimator (AULE), Principal Component Regression Estimator (PCRE), r-k class estimator and r-d class estimator) and the respective predictors were considered in a misspecified linear regression model when there exists multicollinearity among explanatory variables. A generalized form was used to compare these estimators and predictors in the mean square error sense. Further, theoretical findings were established using mean square error matrix and scalar mean square error. Finally, a numerical example and a Monte Carlo simulation study were done to illustrate the theoretical findings. The simulation study revealed that LE and RE outperform the other estimators when weak multicollinearity exists, and RE, r-k class and r-d class estimators outperform the other estimators when moderated and high multicollinearity exist for certain values of shrinkage parameters, respectively. The predictors based on the LE and RE are always superior to the other predictors for certain values of shrinkage parameters.
基金Supported by the National Natural Science Foundation of China(11071022)Science and Technology Project of Hubei Provincial Department of Education(Q20122202)
文摘In this paper, we introduce a generalized Liu estimator and jackknifed Liu estimator in a linear regression model with correlated or heteroscedastic errors. Therefore, we extend the Liu estimator. Under the mean square error(MSE), the jackknifed estimator is superior to the Liu estimator and the jackknifed ridge estimator. We also give a method to select the biasing parameter for d. Furthermore, a numerical example is given to illustvate these theoretical results.
文摘Longitudinal trends of observations can be estimated using the generalized multivariate analysis of variance (GMANOVA) model proposed by [10]. In the present paper, we consider estimating the trends nonparametrically using known basis functions. Then, as in nonparametric regression, an overfitting problem occurs. [13] showed that the GMANOVA model is equivalent to the varying coefficient model with non-longitudinal covariates. Hence, as in the case of the ordinary linear regression model, when the number of covariates becomes large, the estimator of the varying coefficient becomes unstable. In the present paper, we avoid the overfitting problem and the instability problem by applying the concept behind penalized smoothing spline regression and multivariate generalized ridge regression. In addition, we propose two criteria to optimize hyper parameters, namely, a smoothing parameter and ridge parameters. Finally, we compare the ordinary least square estimator and the new estimator.
基金the National Natural Science Foundation of China(10571093)the Scientific Research Fund of Zhejiang Provincial Eduction Department(20061599).
文摘本文我们提出了使用调查数据中完全辅助信息的模型校正K-L相对熵最小化方法.在估计有限总体均值时我们的估计渐近等价于MC估计(Wu and Sitter(2001)).我们方法一个有吸引力的优点是,导出的权具有特征:pi>0和■pi=0 .这使得可把此方法应用于估计分布函数和分位数.导出的分布函数估计量FMKL(y)渐近等价于广义回归估计,且本身是一分函数布.
文摘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].