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Probabilistic predictive principal component analysis for spatially misaligned and high-dimensional air pollution data with missing observations

机译:空间错位和高维空气污染数据与缺失观测的概率预测主成分分析

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Abstract Accurate predictions of pollutant concentrations at new locations are often of interest in air pollution studies on fine particulate matters (PM2.5), in which data are usually not measured at all study locations. PM2.5 is also a mixture of many different chemical components. Principal component analysis (PCA) can be incorporated to obtain lowerdimensional representative scores of such multipollutant data. Spatial prediction can then be used to estimate these scores at new locations. Recently developed predictive PCA modifies the traditional PCA algorithm to obtain scores with spatial structures that can be well predicted at unmeasured locations. However, these approaches require complete data, whereas multipollutant data tend to have complex missing patterns in practice. We propose probabilistic versions of predictive PCA, which allow for flexible model‐based imputation that can account for spatial information and subsequently improve the overall predictive performance.
机译:摘要在新地区的污染物浓度的准确预测往往是对细颗粒物质(PM2.5)的空气污染研究的兴趣,其中通常在所有研究位置没有测量数据。 PM2.5也是许多不同化学成分的混合物。可以纳入主成分分析(PCA)以获得这种多能数据疲民数据的低幂代表性分数。然后可以使用空间预测来估计新位置的这些分数。最近开发的预测PCA改变了传统的PCA算法,获得了具有在未测量位置良好预测的空间结构的得分。然而,这些方法需要完整的数据,而多体数据倾向于在实践中具有复杂的缺失模式。我们提出了预测PCA的概率版本,其允许灵活的基于模型的估算,可以考虑空间信息并随后提高整体预测性能。

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