Enumeration of maximal clique for mining spatial co-location patterns

Ghazi Al-Naymat
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引用次数: 28

Abstract

This paper presents a systematic approach to mine co- location patterns in Sloan Digital Sky Survey (SDSS) data. SDSS Data Release 5 (DR5) contains 3.6 TB of data. Availability of such large amount of useful data is an opportunity for application of data mining techniques to generate interesting information. The major reason for the lack of such data mining applications in SDSS is the unavailability of data in a suitable format. This work illustrates a procedure to obtain additional galaxy types from an available attributes and transform the data into maximal cliques of galaxies which in turn can be used as transactions for data mining applications. An efficient algorithm GridClique is proposed to generate maximal cliques from large spatial databases. It should be noted that the full general problem of extracting a maximal clique from a graph is known as NP-Hard. The experimental results show that the GridClique algorithm successfully generates all maximal cliques in the SDSS data and enables the generation of useful co-location patterns.
空间共位模式挖掘的最大团枚举
本文提出了一种系统的方法来挖掘斯隆数字巡天(SDSS)数据中的共定位模式。SDSS Data Release 5 (DR5)包含3.6 TB的数据。如此大量有用数据的可用性为应用数据挖掘技术生成有趣的信息提供了机会。在SDSS中缺乏这种数据挖掘应用程序的主要原因是无法获得适当格式的数据。这项工作说明了从可用属性中获得额外星系类型的过程,并将数据转换为最大的星系团,这些星系团反过来可以用作数据挖掘应用程序的事务。提出了一种从大型空间数据库中生成最大团的高效算法GridClique。应该注意的是,从图中提取最大团的完整一般问题被称为NP-Hard。实验结果表明,GridClique算法成功地生成了SDSS数据中的所有最大团,并能够生成有用的共定位模式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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