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Mixture of Regression Models for Large Spatial Datasets

机译:大型空间数据集的回归模型的混合物

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摘要

When a spatial regression model that links a response variable to a set of explanatory variables is desired, it is unlikely that the same regression model holds throughout the domain when the spatial domain and dataset are both large and complex. The locations where the trend changes may not be known, and we present here a mixture of regression models approach to identifying the locations wherein the relationship between the predictors and the response is similar; to estimating the model within each group; and to estimating the number of groups. An EM algorithm for estimating this model is presented along with a criterion for choosing the number of groups. Performance of the estimators and model selection are demonstrated through simulation. An example with groundwater depth and associated predictors generated from a large physical model simulation demonstrates the fit and interpretation of the proposed model. R code is provided in the that simulates the scenarios tested herein; implements the method; and reproduces the groundwater depth results. for this article are available online.
机译:当需要将响应变量链接到一组解释变量的空间回归模型时,当空间域和数据集都大而复杂时,相同的回归模型不太可能在整个域中保存。趋势改变可能不知道的位置,并且我们在这里存在回归模型的混合来识别预测器与响应之间的关系的位置;估算每个组内的模型;并估计群体数量。呈现用于估计该模型的EM算法以及用于选择组数的标准。通过仿真证明了估计器和模型选择的性能。具有从大型物理模型模拟产生的地下水深度和相关预测器的示例演示了所提出的模型的拟合和解释。 R代码在模拟本文测试的场景中提供;实现方法;并再现地下水深度结果。本文可在线获取。

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