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A progressive refinement approach to spatial data mining.

机译:一种逐步完善的空间数据挖掘方法。

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The goal of this thesis is to analyze methods for mining of spatial data, and to determine environments in which efficient spatial data mining methods can be implemented. In the spatial data mining process, we use (1) non-spatial properties of the spatial objects and (2) attributes, predicates and functions describing spatial relations between described objects and other features located in the spatial proximity of the described objects. The descriptions are generalized, transformed into predicates, and the discovered knowledge is presented using multiple levels of concepts.; We introduce the concept of spatial association rules and present efficient algorithms for mining spatial associations and for the classification of objects stored in geographic information databases. A spatial association rule describes the implication of one or a set of features (or predicates) by another set of features in spatial databases. A spatial classification process is a process that assigns a set of spatial objects into a number of given classes based on a set of spatial and non-spatial features (predicates).; The developed algorithms are based on the progressive refinement approach. This approach allows for efficient discovery of knowledge in large spatial databases. A complete set of spatial association rules can be discovered, and accurate decision trees can be constructed, using the progressive refinement approach. Theoretical analysis and experimental results demonstrate the efficiency of the algorithms. The completeness of the set of discovered spatial association rules is shown through the theoretical analysis and the experiments show that the proposed spatial classification algorithm allows for better accuracy of classification than the algorithm proposed in the previous work [37].; The results of the research have been incorporated into the spatial data mining system prototype, GeoMiner. GeoMiner includes five spatial data mining modules: characterizer, comparator, associator, cluster analyzer, and classifier. The SAND (Spatial And Nonspatial Data) architecture has been applied in the modeling of spatial databases. The GeoMiner system includes the spatial data cube construction module, the spatial on-line analytical processing (OLAP) module, and spatial data mining modules. A spatial data mining language, GMQL (Geo-Mining Query Language), is designed and implemented as an extension to Spatial SQL, for spatial data mining. Moreover, an interactive, user-friendly data mining interface has been constructed and tools have been implemented for visualization of discovered spatial knowledge. (Abstract shortened by UMI.)
机译:本文的目的是分析空间数据挖掘的方法,并确定可以实现有效空间数据挖掘方法的环境。在空间数据挖掘过程中,我们使用(1)空间对象的非空间特性,以及(2)描述所描述对象与位于所描述对象在空间上邻近的其他特征之间的空间关系的属性,谓词和函数。这些描述被概括,转换成谓词,并且使用多个层次的概念来呈现发现的知识。我们介绍了空间关联规则的概念,并介绍了用于挖掘空间关联和对存储在地理信息数据库中的对象进行分类的有效算法。空间关联规则描述了空间数据库中另一组特征对一个或一组特征(或谓词)的影响。空间分类过程是基于一组空间和非空间特征(谓词)将一组空间对象分配给多个给定类的过程。所开发的算法基于渐进式细化方法。这种方法可以有效地发现大型空间数据库中的知识。可以发现完整的空间关联规则集,并使用渐进式细化方法可以构建准确的决策树。理论分析和实验结果证明了算法的有效性。通过理论分析证明了所发现的空间关联规则集的完整性,实验表明,所提出的空间分类算法比以前的工作提出的算法具有更好的分类精度[37]。研究结果已整合到空间数据挖掘系统原型 GeoMiner 中。 GeoMiner 包括五个空间数据挖掘模块:表征器,比较器,关联器,聚类分析器和分类器。 SAND(空间和非空间数据)体系结构已应用于空间数据库的建模。 GeoMiner 系统包括空间数据立方体构建模块,空间在线分析处理(OLAP)模块和空间数据挖掘模块。设计并实现了空间数据挖掘语言GMQL(地理挖掘查询语言),作为对空间数据挖掘的Spatial SQL的扩展。此外,已经构建了交互式,用户友好的数据挖掘界面,并且已经实现了用于可视化发现的空间知识的工具。 (摘要由UMI缩短。)

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