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Distinguishing extensive and intensive properties for meaningful geocomputation and mapping

机译:区分广泛和密集的属性以实现有意义的地球计算和制图

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摘要

A most fundamental and far-reaching trait of geographic information is the distinction between extensive and intensive properties. In common understanding, originating in Physics and Chemistry, extensive properties increase with the size of their supporting objects, while intensive properties are independent of this size. It has long been recognized that the decision whether analytical and cartographic measures can be meaningfully applied depends on whether an attribute is considered intensive or extensive. For example, the choice of a map type as well as the application of basic geocomputational operations, such as spatial intersections, aggregations or algebraic operations such as sums and weighted averages, strongly depend on this semantic distinction. So far, however, the distinction can only be drawn in the head of an analyst. We still lack practical ways of automation for composing GIS workflows and to scale up mapping and geocomputation over many data sources, e.g. in statistical portals. In this article, we test a machine-learning model that is capable of labeling extensive/intensive region attributes with high accuracy based on simple characteristics extractable from geodata files. Furthermore, we propose an ontology pattern that captures central applicability constraints for automating data conversion and mapping using Semantic Web technology.
机译:地理信息的最基本和最深远的特征是广泛属性和集约属性之间的区别。在通常的理解中,起源于物理和化学的广泛特性会随其支持对象的大小而增加,而强度特性则与该大小无关。早已认识到,是否可以有意义地应用分析和制图方法的决定取决于属性是密集的还是广泛的。例如,地图类型的选择以及基本地理计算操作(例如空间相交,聚合或代数操作,例如求和和加权平均值)的应用在很大程度上取决于此语义上的区别。但是,到目前为止,这种区分只能在分析师的头上进行。我们仍然缺乏实用的自动化方法来构成GIS工作流以及在许多数据源(例如在统计门户网站中。在本文中,我们测试了一种机器学习模型,该模型能够基于可从地理数据文件中提取的简单特征,以高精度标记广泛/密集的区域属性。此外,我们提出了一种本体模式,该模式捕获了使用语义Web技术自动进行数据转换和映射的主要适用性约束。

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