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Hierarchical Factor Models for Large Spatially Misaligned Data: A Low-Rank Predictive Process Approach

机译:大空间错位数据的分层因素模型:低秩预测过程方法

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This article deals with jointly modeling a large number of geographically referenced outcomes observed over a very large number of locations. We seek to capture associations among the variables as well as the strength of spatial association for each variable. In addition, we reckon with the common setting where not all the variables have been observed over all locations, which leads to spatial misalignment. Dimension reduction is needed in two aspects: (i) the length of the vector of outcomes, and (ii) the very large number of spatial locations. Latent variable (factor) models are usually used to address the former, although low-rank spatial processes offer a rich and flexible modeling option for dealing with a large number of locations. We merge these two ideas to propose a class of hierarchical low-rank spatial factor models. Our framework pursues stochastic selection of the latent factors without resorting to complex computational strategies (such as reversible jump algorithms) by utilizing certain identifiability characterizations for the spatial factor model. A Markov chain Monte Carlo algorithm is developed for estimation that also deals with the spatial misalignment problem. We recover the full posterior distribution of the missing values (along with model parameters) in a Bayesian predictive framework. Various additional modeling and implementation issues are discussed as well. We illustrate our methodology with simulation experiments and an environmental data set involving air pollutants in California.
机译:本文将共同建模在大量地点观察到的大量地理参考结果。我们寻求捕获变量之间的关联以及每个变量的空间关联强度。另外,我们认为没有在所有位置都观察到所有变量的通用设置会导致空间失准。在两个方面都需要减小维度:(i)结果向量的长度,以及(ii)大量的空间位置。尽管低阶空间过程为处理大量位置提供了丰富而灵活的建模选项,但通常使用潜在变量(因子)模型来解决前者。我们将这两个想法合并,以提出一类分层的低秩空间因子模型。我们的框架通过对空间因素模型进行某些可识别性表征,来寻求潜在因素的随机选择,而无需诉诸复杂的计算策略(例如可逆跳转算法)。开发了用于估计的马尔可夫链蒙特卡罗算法,该算法还处理空间未对准问题。我们在贝叶斯预测框架中恢复缺失值(以及模型参数)的全部后验分布。还讨论了各种其他建模和实现问题。我们通过模拟实验和涉及加利福尼亚空气污染物的环境数据集说明了我们的方法。

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