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ESTIMATION AND PREDICTION 1N THE SPATIAL LINEAR MODEL

机译:估计和预测1N空间线性模型

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Often in environmental monitoring studies interesting ecological factors will be observed at several locations repeatedly over time. Generally these space--time data are subject to a sequential spatial data analysis. In geostatistics, spatial data describing an environmental phenomenon like the pH value in precipitation at several locations are regarded as a realisation from a stochastic process. Component models are used to interpret the spatial variation of the process. Decomposing the spatial process into single components is based on the theory of linear models. Trend surface analysis is seen to be the geostatistical method for best linear unbiased estimation (BLUE) of the trend component, whereas universal kriging is equivalent to best linear unbiased prediction (BLUP) of the realisation of the spatial process. Furthermore trend surface analysis and universal kriging are shown to agree with the estimation of fixed effects and prediction of fixed and random effects in mixed linear models. Since estimation and prediction for spatial data result in different interpolations the differences are explained also graphically by example. The example uses acid-precipitation monitoring data. The extension of these spatial methods for application to space--time problems by combination with dynamic linear models is treated in the discussion.
机译:在环境监测研究中,随着时间的推移,经常会在几个位置重复观察到有趣的生态因素。通常,这些时空数据要进行顺序空间数据分析。在地统计学中,描述环境现象(如在多个位置的降水中的pH值)的空间数据被认为是来自随机过程的一种实现。组件模型用于解释过程的空间变化。将空间过程分解为单个组件是基于线性模型的理论。趋势表面分析被视为用于趋势分量的最佳线性无偏估计(BLUE)的地统计方法,而通用克里金等效于实现空间过程的最佳线性无偏预测(BLUP)。此外,趋势表面分析和通用克里金法也显示出与混合线性模型中固定效应的估计以及固定效应和随机效应的预测一致。由于对空间数据的估计和预测会导致不同的插值,因此将通过示例以图形方式说明差异。该示例使用酸沉淀监控数据。讨论中讨论了将这些空间方法与动态线性模型结合使用以扩展到时空问题的方法。

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