基于多边形的相关空间数据集挖掘方法

Sujing Wang, Chun-Sheng Chen, Vadeerat Rinsurongkawong, F. Akdag, C. Eick
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引用次数: 14

摘要

多边形可以在地理参考数据的分析中发挥重要作用,因为它们为特定类型的空间对象提供了一种自然的表示,并且可以用作空间集群的模型。本文声称多边形分析对于挖掘相关的空间数据集特别有用。提出了一种对不同空间数据集中提取的多边形进行聚类的新方法,该方法包括对多边形进行聚类的元聚类模块和根据用户偏好从多边形元聚类中生成最终聚类的汇总生成模块。此外,还介绍了一种基于密度的多边形聚类算法。我们的方法在涉及德克萨斯州臭氧污染的真实案例研究中进行了评估;它能够揭示不同臭氧热点之间的有趣关系,以及臭氧热点与其他气象变量之间的有趣联系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A polygon-based methodology for mining related spatial datasets
Polygons can serve an important role in the analysis of geo-referenced data as they provide a natural representation for particular types of spatial objects and in that they can be used as models for spatial clusters. This paper claims that polygon analysis is particularly useful for mining related, spatial datasets. A novel methodology for clustering polygons that have been extracted from different spatial datasets is proposed which consists of a meta clustering module that clusters polygons and a summary generation module that creates a final clustering from a polygonal meta clustering based on user preferences. Moreover, a density-based polygon clustering algorithm is introduced. Our methodology is evaluated in a real-world case study involving ozone pollution in Texas; it was able to reveal interesting relationships between different ozone hotspots and interesting associations between ozone hotspots and other meteorological variables.
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