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The Asymptotic Covariance Matrix of the Least Squares Estimator in the Stochastic Linear Regression Model: The Case of Elliptically Symmetric Distribution

机译:随机线性回归模型中最小二乘估计器的渐近协方差矩阵:椭圆对称分布的情况

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摘要

This article considers the unconditional asymptotic covariance matrix of the least squares estimator in the linear regression model with stochastic explanatory variables. The asymptotic covariance matrix of the least squares estimator of regression parameters is evaluated relative to the standard asymptotic covariance matrix when the joint distribution of the dependent and explanatory variables is in the class of elliptically symmetric distributions. An empirical example using financial data is presented. Numerical examples and simulation experiments are given to illustrate the difference of the two asymptotic covariance matrices.
机译:本文认为具有随机解释模型中最小二乘估计器的无条件渐近协方差矩阵与随机解释模型。当依赖性和解释变量的联合分布处于椭圆对称分布的类别时,相对于标准渐近协方差矩阵评估回归参数的最小二乘估计的渐变协方差矩阵。提出了使用财务数据的经验示例。给出了数值例子和模拟实验来说明两个渐近协方差矩阵的差异。

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