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Bayesian spatial and spatiotemporal models based on multiscale factorizations

机译:基于贝叶斯空间和时空模型在多尺度分解

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Abstract We review the literature on spatial and spatiotemporal models based on spatial multiscale factorizations. Specifically, we review models based on wavelets and Kolaczyk–Huang factorizations for Gaussian and Poisson data. These multiscale models decompose spatial and spatiotemporal datasets into many small components, called multiscale coefficients, at multiple levels of spatial resolution. Then analysis proceeds independently for each multiscale coefficient. After that, aggregation equations are used to coherently combine the analyses from the multiple multiscale coefficients to obtain a statistical analysis at the original resolution level. The computational cost of such analysis grows linearly with sample size. Furthermore, computations for these models are scalable, parallelizable, and fast. Therefore, these multiscale models are tremendously useful for the analysis of massive spatial and spatiotemporal datasets. This article is categorized under: Statistical Learning and Exploratory Methods of the Data Sciences > Modeling Methods Statistical Models > Bayesian Models Data: Types and Structure > Image and Spatial Data
机译:摘要我们在空间和文献回顾基于空间多尺度时空模型分解。基于小波和Kolaczyk-Huang分解为高斯分布和泊松数据。这些多尺度模型空间和分解时空数据集分成许多小组件,称为多尺度系数,多个层次的空间分辨率。独立分析所得多尺度系数。方程用于前后一致地结合从多个多尺度分析系数获得统计分析原来的分辨率水平。成本的分析与样本线性增长大小。可伸缩,可平行的,很快。因此,这些多尺度模型对于大规模的分析非常有用空间和时空数据集。下分类:统计学习和数据的探索性方法科学>建模方法>贝叶斯统计模型>图像和模型数据:类型和结构空间数据

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