Vector-Degree: A General Similarity Measure for Co-location Patterns

Pingping Wu, Lizhen Wang, Muquan Zou
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引用次数: 1

Abstract

Co-location pattern mining is one of the hot issues in spatial pattern mining. Similarity measures between co-location patterns can be used to solve problems such as pattern compression, pattern summarization, pattern selection and pattern ordering. Although, many researchers have focused on this issue recently and provided a more concise set of co-location patterns based on these measures. Unfortunately, these measures suffer from various weaknesses, e.g., some measures can only calculate the similarity between super-pattern and sub-pattern while some others require additional domain knowledge. In this paper, we propose a general similarity measure for any two co-location patterns. Firstly, we study the characteristics of the co-location pattern and present a novel representation model based on maximal cliques. Then, two materializations of the maximal clique and the pattern relationship, 0-1 vector and key-value vector, are proposed and discussed in the paper. Moreover, based on the materialization methods, the similarity measure, Vector-Degree, is defined by applying the cosine similarity. Finally, similarity is used to group the patterns by a hierarchical clustering algorithm. The experimental results on both synthetic and real world data sets show the efficiency and effectiveness of our proposed method.
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向量度:共同定位模式的一般相似度量
同址模式挖掘是空间模式挖掘中的热点问题之一。共定位模式之间的相似性度量可用于解决模式压缩、模式总结、模式选择和模式排序等问题。尽管最近许多研究人员都在关注这个问题,并在这些度量的基础上提供了一套更简洁的共址模式。不幸的是,这些度量存在各种弱点,例如,一些度量只能计算超级模式和子模式之间的相似性,而另一些度量则需要额外的领域知识。在本文中,我们提出了一个通用的相似性度量任意两个共位模式。首先,研究了同位模式的特点,提出了一种基于最大团的同位模式表示模型。然后,提出并讨论了极大团及其模式关系的两种物化形式:0-1向量和键值向量。在物化方法的基础上,利用余弦相似度定义了相似度度量向量度。最后,利用相似度对模式进行分层聚类。在合成数据集和实际数据集上的实验结果表明了我们提出的方法的效率和有效性。
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