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A semi-parametric Bayesian approach to the instrumental variable problem

机译:工具变量问题的半参数贝叶斯方法

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摘要

We develop a Bayesian semi-parametric approach to the instrumental variable problem. We assume linear structural and reduced form equations, but model the error distributions non-parametrically. A Dirichlet process prior is used for the joint distribution of structural and instrumental variable equations errors. Our implementation of the Dirichlet process prior uses a normal distribution as a base model. It can therefore be interpreted as modeling the unknown joint distribution with a mixture of normal distributions with a variable number of mixture components. We demonstrate that this procedure is both feasible and sensible using actual and simulated data. Sampling experiments compare inferences from the non-parametric Bayesian procedure with thosebased on procedures from the recent literature on weak instrument asymptotics. When errors are non-normal, our procedure is more efficient than standard Bayesian or classical methods.
机译:我们针对工具变量问题开发了贝叶斯半参数方法。我们假设线性结构方程和简化形式方程,但是非参数地模拟误差分布。 Dirichlet过程先验用于结构和工具变量方程误差的联合分布。我们先前对Dirichlet过程的实现使用正态分布作为基本模型。因此,可以将其解释为用正态分布的混合物和数量可变的混合成分对未知的关节分布进行建模。我们证明使用实际和模拟数据,此程序既可行又明智。抽样实验将非参数贝叶斯方法的推论与基于弱仪器渐近性的最新文献中的方法的推论进行了比较。当错误为非正常错误时,我们的程序比标准贝叶斯方法或经典方法更有效。

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