We introduce a prior for the parameters of univariate continuous distributions, based on the Wasserstein information matrix, which is invariant under reparameterisations. We discuss the links between the proposed prior with information geometry. We present several examples where we can either obtain this prior in closed-form, or propose a numerically tractable approximation for cases where the prior is not available in closed-form. We present sufficient conditions for the propriety of the posterior distribution for general classes of models. We present a simulation study that shows that the induced posteriors have good frequentist properties.
翻译:我们根据瓦森斯坦信息矩阵(在重新校正时是无差异的),对单体连续分布参数引入了前置参数。我们讨论了先前提议的信息与信息几何之间的联系。我们举了几个例子,我们既可以在封闭式之前获得这一参数,也可以为没有闭式前置数据的案件提出数字可移动的近似值。我们为一般模型类别的后端分布提供了适当的条件。我们提出模拟研究,表明诱导的后继者具有良好的常年特征。