线性测量误差模型中的贝叶斯工具变量估计

Pub Date : 2023-04-19 DOI:10.1002/cjs.11773
Qi Wang, Lichun Wang, Liqun Wang
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引用次数: 0

摘要

本文将贝叶斯方法与工具变量方法相结合,研究测量误差模型的参数估计问题,分别推导出已知和未知方差参数的不同前验下的参数后验分布,并计算二次损失下的参数贝叶斯估计器(BE)。然而,由于涉及复杂的多重积分,很难得到贝叶斯估计的明确表达式。因此,我们采用线性贝叶斯方法,既不指定先验形式,又避免了这些复杂的积分计算,从而得到不同先验的线性贝叶斯估计器(LBE)的表达式。我们证明,在均方误差矩阵准则下,该线性贝叶斯估计器优于两阶段最小二乘估计器。数值模拟表明,无论方差参数是已知还是未知,我们的 LBE 都非常接近真实参数,而且随着样本量的增加,它逐渐接近 BE。我们的结果表明,这种工具变量方法对测量误差模型是有效的。
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Bayesian instrumental variable estimation in linear measurement error models

In this article, we study the problem of parameter estimation for measurement error models by combining the Bayes method with the instrumental variable approach, deriving the posterior distribution of parameters under different priors with known and unknown variance parameters, respectively, and calculating the Bayes estimator (BE) of the parameters under quadratic loss. However, it is difficult to obtain an explicit expression for BE because of the complex multiple integrals involved. Therefore, we adopt the linear Bayes method, which does not specify the form of the prior and avoids these complicated integral calculations, to obtain an expression for the linear Bayes estimator (LBE) for different priors. We prove that this LBE is superior to the two-stage least squares estimator under the mean squared error matrix criterion. Numerical simulations show that our LBE is very close to the real parameter whether the variance parameters are known or unknown, and it gradually approaches BE as the sample size increases. Our results indicate that this instrumental variable approach is valid for measurement error models.

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