基于共现图的分层抽象过程建模

Supaporn Simcharoen, Yanakorn Ruamsuk, A. Mingkhwan, H. Unger
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引用次数: 0

摘要

共现图是由表示知识的文档集合组合而成的。然而,确定这可能涉及的知识组或集群的数量仍然是一个挑战。这项工作将探索层次聚类算法,该算法从每个节点读取的每个集群的聚类中心(质心)构建层次结构。每个节点找到一个集群间的节点,该节点将通过引用节点到集群间中心的距离来分配,该距离确保该节点是该集群间的成员。集群间中心是一个抽象的标识符,表示各自集群的所有节点。当构建下一个层次结构级别时;将再次应用集群。所有的进程都是重复的,直到最后一个抽象标识符(根)。10个数据集的结果表明,共现图可以分层聚类,分层层次在第4层结束。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling a Hierarchical Abstraction Process on top of Co-Occurrence Graphs
A co-occurrence graph is incorporated from sets of documents that represent knowledge. However, determining number of groups or clusters of knowledge this may pertain to remains a challenge. This work will explore the hierarchical clustering algorithm for which a hierarchy is built from the cluster center (centroid) of each cluster that is read node by node. Each node finds an inter-cluster that will be assigned by referring to a distance from the node to the inter-cluster center which ensures that this node is a member of that inter-cluster. The inter-cluster center is an abstract identifier that represents all nodes of the respective cluster. When the next hierarchy level is built; the clustering will be applied again. All processes are repeated until the last remaining abstract identifier (root). The results of 10 datasets showed that the co-occurrence graph can be hierarchical clustering for which the hierarchical levels ended at level 4.
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