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Mining Model Trees from Spatial Data

机译:从空间数据中挖掘模型树

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摘要

Mining regression models from spatial data is a fundamental task in Spatial Data Mining. We propose a method, namely Mrs-SMOTI, that takes advantage from a tight-integration with spatial databases and mines regression models in form of trees in order to partition the sample space. The method is characterized by three aspects. First, it is able to capture both spatially global and local effects of explanatory attributes. Second, explanatory attributes that influence the response attribute do not necessarily come from a single layer. Third, the consideration that geometrical representation and relative positioning of spatial objects with respect to a reference system implicitly define both spatial relationships and properties. An application to real-world spatial data is reported.
机译:从空间数据中挖掘回归模型是空间数据挖掘中的一项基本任务。我们提出了一种名为Mrs-SMOTI的方法,该方法利用了与空间数据库的紧密集成并以树的形式挖掘回归模型的优势,以便划分样本空间。该方法的特征在于三个方面。首先,它能够捕获解释属性的空间全局和局部影响。其次,影响响应属性的解释性属性不一定来自单个层。第三,考虑空间对象相对于参考系统的几何表示和相对定位隐式定义了空间关系和属性。报告了对现实空间数据的应用。

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