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Analyzing Multi-level Spatial Association Rules Through a Graph-Based Visualization

机译:通过基于图的可视化分析多级空间关联规则

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Association rules discovery is a fundamental task in spatial data mining where data are naturally described at multiple levels of granularity. ARES is a spatial data mining system that takes advantage from this taxonomic knowledge on spatial data to mine multi-level spatial association rules. A large amount of rules is typically discovered even from small set of spatial data. In this paper we present a graph-based visualization that supports data miners in the analysis of multi-level spatial association rules discovered by ARES and takes advantage from hierarchies describing the same spatial object at multiple levels of granularity. An application on real-world spatial data is reported. Results show that the use of the proposed visualization technique is beneficial.
机译:关联规则发现是空间数据挖掘中的一项基本任务,在该空间中,数据自然以多个粒度级别进行描述。 ARES是一种空间数据挖掘系统,它利用对空间数据的分类学知识来挖掘多级空间关联规则。即使从很小的空间数据集中,通常也会发现大量规则。在本文中,我们提出了一种基于图的可视化,该可视化在ARES发现的多级空间关联规则的分析中支持数据挖掘者,并利用了在多个粒度级别上描述同一空间对象的层次结构的优势。报告了有关实际空间数据的应用程序。结果表明,使用所提出的可视化技术是有益的。

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