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首页> 外文期刊>Journal of Econometrics >Invariant Bayesian inference in regression models that is robust against the Jeffreys-Lindley's paradox
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Invariant Bayesian inference in regression models that is robust against the Jeffreys-Lindley's paradox

机译:回归模型中的不变贝叶斯推断对Jeffreys-Lindley悖论具有鲁棒性

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We obtain the prior and posterior probability of a nested regression model as the Hausdorff-integral of the prior and posterior on the parameters of an encompassing linear regression model over a lower-dimensional set that represents the nested model.The Hausdorff-integral is invariant and therefore avoids the Borel-Kolmogorov paradox. Basing priors and prior probabilities of nested regression models on the prior on the parameters of an encompassing linear regression model reduces the discrepanciesbetween classical and Bayesian inference, like, the Jeffreys-Lindley's paradox. We illustrate the analysis with examples of linear restrictions, i.e. a linear regression model, and non-linear restrictions, i.e. a cointegration and an auloregressive movingaverage model, on the parameters of an encompassing linear regression model.
机译:我们在代表嵌套模型的低维集合上的包围线性回归模型的参数上,将嵌套回归模型的先验概率和后验概率作为先验和后验的Hausdorff积分.Hausdorff积分不变且因此避免了Borel-Kolmogorov悖论。将嵌套回归模型的先验和先验概率基于包含的线性回归模型的参数建立在先验基础上,可以减少古典推理和贝叶斯推理之间的差异,例如Jeffreys-Lindley悖论。我们以包含线性回归模型的参数为例,说明了线性约束(即线性回归模型)和非线性约束(即协整和自回归移动平均模型)的示例分析。

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