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Robust specification of the roughness penalty prior distribution in spatially adaptive Bayesian P-splines models

机译:空间自适应贝叶斯P样模型的粗糙度罚款的粗糙度规范

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摘要

The potential important role of the prior distribution of the roughness penalty parameter in the resulting smoothness of Bayesian P-splines models is considered. The recommended specification for that distribution yields models that can lack flexibility in specific circumstances. In such instances, these are shown to correspond to a frequentist P-splines model with a predefined and severe roughness penalty parameter, an obviously undesirable feature. It is shown that the specification of a hyperprior distribution for one parameter of that prior distribution provides the desired flexibility. Alternatively, a mixture prior can also be used. An extension of these two models by enabling adaptive penalties is provided. The posterior of all the proposed models can be quickly explored using the convenient Gibbs sampler.
机译:考虑了粗糙度惩罚参数在所得到的贝叶斯P样曲线模型的平滑度之前分布的潜在重要作用。 该分布的推荐规范产生了在特定情况下可能缺乏灵活性的模型。 在这种情况下,这些情况被证明是对应于具有预定义和严重粗糙度惩罚参数的频率p样分模型,这是一个明显不希望的特征。 结果表明,该先前分配的一个参数的高度分布规范提供了所需的灵活性。 或者,也可以使用混合物。 提供了通过启用自适应惩罚来扩展这两个模型。 可以使用方便的GIBBS采样器快速探索所有拟议模型的后部。

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