基于分层聚类的超对等语义网络设计

Yi-Hong Tan, Bin Li, Xue-yong Li, Ya-ping Lin
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引用次数: 2

摘要

在超级对等语义网络中,当有新的对等体加入网络时,对等体将利用本地共享文档的语义特征来选择超级对等体。在传统的网络中,客户端对等体使用对等体中集群的语义特征来选择要连接的超级对等体。但是聚类是固定的、通用的、单级的,不能有效地表示所有文档的特征。在选择超级对等体连接时,客户端-对等体不能根据超级对等体语义组的语义类别选择一些不同级别的相对集群。提出了一种基于层次聚类树的超级对等语义网络(HCTSPN)。首先,提出了一种改进的分层聚类算法,用于组织客户端对等体中的共享文档。其次,提出了基于层次聚类树和搜索机制的超对等语义网络构建方法。最后进行了实验,结果表明该网络的搜索效率和检索质量得到了提高。
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Designing a Super-Peer semantic Network based on Hierarchical Clusters
In super-peer semantic network, when a new peer joins the network, the peer will use the semantic feature of local share documents to select super-peers. In traditionally networks, client-peers use the semantic feature of clusters in peers to select the super-peers to connect. But the clusters are fixed, general, single-level, and not effective to represent the features of all documents. And, while selecting super-peers to connect, the client-peer cannot select some relative clusters in different level accord to the semantic categories of super-peers semantic group. In this paper, a Super-Peer semantic Network based on Hierarchical Clustering Tree (HCTSPN) is presented. First, an improved hierarchical clustering algorithm for organizing the share documents in a client-peer is proposed. Secondly, the method of constructing a super-peer semantic network based on hierarchical clustering tree and search mechanism are proposed. Finally, the experiments are implemented, and the results show that search efficiency and retrieval quality are improved in the network.
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