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A Spatial Entropy-Based Decision Tree for Classification of Geographical Information

机译:基于空间熵的地理信息分类决策树

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A decision tree is a classification algorithm that automatically derives a hierarchy of partition rules with respect to a target attribute of a large dataset. However, spatial autocorrelation makes conventional decision trees underperform for geographical datasets as the spatial distribution is not taken into account. The research presented in this paper introduces the concept of a spatial decision tree based on a spatial diversity coefficient that measures the spatial entropy of a geo-referenced dataset. The principle of this solution is to take into account the spatial autocorrelation phenomena in the classification process, within a notion of spatial entropy that extends the conventional notion of entropy. Such a spatial entropy-based decision tree integrates the spatial autocorrelation component and generates a classification process adapted to geographical data. A case study oriented to the classification of an agriculture dataset in China illustrates the potential of the proposed approach.
机译:决策树是一种分类算法,可自动针对大型数据集的目标属性推导分区规则的层次结构。但是,由于不考虑空间分布,因此空间自相关使常规决策树的性能不及地理数据集。本文提出的研究介绍了一种基于空间分集系数的空间决策树的概念,该系数可测量地理参考数据集的空间熵。该解决方案的原理是在扩展传统熵概念的空间熵概念内,考虑分类过程中的空间自相关现象。这样的基于空间熵的决策树整合了空间自相关分量,并生成了适合于地理数据的分类过程。一项针对中国农业数据集分类的案例研究说明了该方法的潜力。

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