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空间极大co-location模式挖掘研究
引用本文:胡 新,王丽珍,周丽华,温佛生.空间极大co-location模式挖掘研究[J].计算机科学与探索,2014(2):150-160.
作者姓名:胡 新  王丽珍  周丽华  温佛生
作者单位:云南大学 信息学院 计算机科学与工程系,昆明650091
摘    要:空间co-location模式代表了一组空间特征的子集,它们的实例在空间中频繁地关联。挖掘空间co-location模式的研究已经有很多,但是针对极大co-location模式挖掘的研究非常少。提出了一种新颖的空间极大co-location模式挖掘算法。首先扫描数据集得到二阶频繁模式,然后将二阶频繁模式转换为图,再通过极大团算法求解得到空间特征极大团,最后使用二阶频繁模式的表实例验证极大团得到空间极大co-location频繁模式。实验表明,该算法能够很好地挖掘空间极大co-location频繁模式。

关 键 词:空间数据挖掘  空间极大co-location模式挖掘  极大团

Mining Spatial Maximal Co-Location Patterns
HU Xin,WANG Lizhen,ZHOU Lihua,WEN Fosheng.Mining Spatial Maximal Co-Location Patterns[J].Journal of Frontier of Computer Science and Technology,2014(2):150-160.
Authors:HU Xin  WANG Lizhen  ZHOU Lihua  WEN Fosheng
Affiliation:HU Xin, WANG Lizhen, ZHOU Lihua, WEN Fosheng
Abstract:A spatial co-location pattern is a group of spatial features whose instances are frequently located in the same region. The mining spatial co-location pattern problem had been investigated in the past, but a little for mining spatial maximal co-location patterns. This paper proposes a novel algorithm for mining spatial maximal co-location patterns. Firstly, the size2 co-location frequent patterns are generated based on the data sets, and then the size2 co-location frequent patterns are converted into a graph. Secondly, the maximal cliques in the graph are found through a maximal clique algorithm. Finally, spatial maximal co-location frequent patterns are obtained by verifying the maximal cliques based on table instances of size2 frequent patterns. The extensive experiments demonstrate that this algorithm is effective and efficient in mining spatial maximal co-location frequent patterns.
Keywords:spatial data mining  spatial maximal co-location pattern mining  maximal clique
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