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一类线性回归模型的参数估计 被引量:3
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作者 甘胜进 王琼瑾 《华中师范大学学报(自然科学版)》 CAS CSCD 北大核心 2021年第3期351-355,共5页
考虑一类多总体线性回归模型,其特点是它们均具有部分相同回归系数.采用各个子总体内样本利用最小二乘方法估计回归参数,然后依据样本容量进行加权估计公共回归系数,最后把公共回归系数回代到各个线性回归模型,利用最小二乘方法估计不... 考虑一类多总体线性回归模型,其特点是它们均具有部分相同回归系数.采用各个子总体内样本利用最小二乘方法估计回归参数,然后依据样本容量进行加权估计公共回归系数,最后把公共回归系数回代到各个线性回归模型,利用最小二乘方法估计不同部分系数.理论结果表明,此种方法得到的估计量,不仅是无偏估计,而且方差比用单个子总体样本得到的最小二乘估计要小,蒙特卡罗模拟证实了该估计量良好的性质. 展开更多
关键词 多总体 线性模型 最小二乘估计
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Partial Dynamic Dimension Reduction for Conditional Mean in Regression
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作者 gan shengjin YU Zhou 《Journal of Systems Science & Complexity》 SCIE EI CSCD 2020年第5期1585-1601,共17页
In many regression analysis,the authors are interested in regression mean of response variate given predictors,not its the conditional distribution.This paper is concerned with dimension reduction of predictors in sen... In many regression analysis,the authors are interested in regression mean of response variate given predictors,not its the conditional distribution.This paper is concerned with dimension reduction of predictors in sense of mean function of response conditioning on predictors.The authors introduce the notion of partial dynamic central mean dimension reduction subspace,different from central mean dimension reduction subspace,it has varying subspace in the domain of predictors,and its structural dimensionality may not be the same point by point.The authors study the property of partial dynamic central mean dimension reduction subspace,and develop estimated methods called dynamic ordinary least squares and dynamic principal Hessian directions,which are extension of ordinary least squares and principal Hessian directions based on central mean dimension reduction subspace.The kernel estimate methods for dynamic ordinary least squares and dynamic Principal Hessian Directions are employed,and large sample properties of estimators are given under the regular conditions.Simulations and real data analysis demonstrate that they are effective. 展开更多
关键词 Dynamic ordinary least square estimate dynamic principal Hessian directions kernel estimate partial dimension reduction
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