一种利用实例树挖掘最大同址模式的有效算法

D. Le, Cao Dai Pham, Van Tuan Luu, Vanha Tran, Dang Hai Nguyen
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引用次数: 1

摘要

普遍同位模式是空间数据挖掘的一个主要分支,它是指在邻近的地理空间中频繁出现的一组特征。随着数据量的不断增加,如果发现了所有的模式,那么它就是冗余的。最大同位模式(mcp)是所有这些模式的压缩表示,它们为研究不同空间特征之间的相互作用提供了新的视角,从而从数据集中发现更多有价值的知识。空间数据集的增加使得发现mcp仍然非常具有挑战性。本文致力于设计一种高效的MCP挖掘算法。首先,将大小为2的特征视为稀疏图,通过从稀疏图中枚举最大团生成候选MCP;其次,我们设计了两种实例树结构,基于星型邻居和兄弟节点的实例树来存储实例的邻居关系。从这些实例树结构中有效地得到候选节点的所有最大共定位实例。最后,如果一个MCP候选候选的参与指数(根据最大共址实例计算)不小于用户给出的最小流行阈值,则该候选候选被标记为流行。通过在合成数据集和实际数据集上与已有算法的比较,证明了该算法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Efficient Algorithm for Mining Maximal Co-location Pattern Using Instance-trees
Prevalent co-location patterns, which refer to groups of features whose instances frequently appear together in nearby geographic space, are one of the main branches of spatial data mining. As the data volume continues to increase, it is redundant if all patterns are discovered. Maximal co-location patterns (MCPs) are a compressed representation of all these patterns and they provide a new insight into the interaction among different spatial features to discover more valuable knowledge from data sets. Increasing the volume of spatial data sets makes discovering MCPs still very challenging. We dedicate this study to designing an efficient MCP mining algorithm. First, features in size-2 patterns are regarded as a sparse graph, MCP candidates are generated by enumerating maximal cliques from the sparse graph. Second, we design two instance-tree structures, star neighbor- and sibling node-based instance-trees to store neighbor relationships of instances. All maximal co-location instances of the candidates are yielded efficiently from these instance-tree structures. Finally, a MCP candidate is marked as prevalent if its participation index, which is calculated based on the maximal co-location instances, is not smaller than a minimum prevalence threshold given by users. The efficiency of the proposed algorithm is proved by comparison with the previous algorithms on both synthetic and real data sets.
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