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BAYESIAN INSTRUMENTAL VARIABLES: PRIORS AND LIKELIHOODS

机译:贝叶斯仪器变量:优先级和相似性

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Instrumental variable (Ⅳ) regression provides a number of statistical challenges due to the shape of the likelihood. We review the main Bayesian literature on instrumental variables and highlight these pathologies. We discuss Jeffreys priors, the connection to the errors-in-the-variables problems and more general error distributions. We propose, as an alternative to the inverted Wishart prior, a new Cholesky-based prior for the covariance matrix of the errors in Ⅳ regressions. We argue that this prior is more flexible and more robust thanthe inverted Wishart prior since it is not based on only one tightness parameter and therefore can be more informative about certain components of the covariance matrix and less informative about others. We show how prior-posterior inference can be formulated in a Gibbs sampler and compare its performance in the weak instruments case for synthetic as well as two illustrations based on well-known real data.
机译:由于可能性的形状,工具变量(Ⅳ)回归提供了许多统计挑战。我们回顾了有关工具变量的主要贝叶斯文献,并重点介绍了这些病理。我们将讨论Jeffreys先验知识,与变量中的错误问题的联系以及更一般的错误分布。我们提出了一种新的基于Cholesky的先验,作为Ⅳ回归中误差的协方差矩阵,以代替倒置的Wishart先验。我们认为,该先验比倒转的Wishart先验更具灵活性和鲁棒性,因为它不仅基于一个紧密度参数,因此可以对协方差矩阵的某些成分提供更多的信息,而对其他成分则提供较少的信息。我们展示了如何在Gibbs采样器中制定先验后推断,并比较了在弱仪器合成情况下的性能以及基于已知真实数据的两个插图。

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