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Comparing Bayesian spatial models: Goodness-of-smoothing criteria for assessing under- and over-smoothing

机译:比较贝叶斯空间模型:评估和过度平滑的良好标准

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Background Many methods of spatial smoothing have been developed, for both point data as well as areal data. In Bayesian spatial models, this is achieved by purposefully designed prior(s) or smoothing functions which smooth estimates towards a local or global mean. Smoothing is important for several reasons, not least of all because it increases predictive robustness and reduces uncertainty of the estimates. Despite the benefits of smoothing, this attribute is all but ignored when it comes to model selection. Traditional goodness-of-fit measures focus on model fit and model parsimony, but neglect “goodness-of-smoothing”, and are therefore not necessarily good indicators of model performance. Comparing spatial models while taking into account the degree of spatial smoothing is not straightforward because smoothing and model fit can be viewed as opposing goals. Over- and under-smoothing of spatial data are genuine concerns, but have received very little attention in the literature.
机译:背景技术对于点数据以及面积数据,已经开发了许多空间平滑方法。 在贝叶斯空间模型中,这是由目的地设计的先前设计的或平滑功能,这些功能是朝向本地或全球平均值的平滑估计。 平滑是几个原因很重要,而不是最重要的,因为它会增加预测的鲁棒性并降低估计的不确定性。 尽管有效地平滑,但在模拟选择时,此属性就是忽略。 传统的健康措施侧重于模型适合和模型定义,但忽视了“平滑的美观”,因此不一定是模型性能的良好指标。 在考虑空间平滑程度的同时比较空间模型并不简单,因为可以将平滑和模型适合视为相反的目标。 空间数据的过度平滑是真正的担忧,但在文献中得到了很少的关注。

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