Co-Clustering WSDL Documents to Bootstrap Service Discovery

Tingting Liang, Liang Chen, Haochao Ying, Jian Wu
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引用次数: 18

Abstract

With the increasing popularity of web service, it is indispensable to efficiently locate the desired service. Utilizing WSDL documents to cluster web services into functionally similar service groups is becoming mainstream in recent years. However, most existing algorithms cluster WSDL documents solely and ignore the distribution of words rather than cluster them simultaneously. Different from the traditional clustering algorithms that are on one-way clustering, this paper proposes a novel approach named WCCluster to simultaneously cluster WSDL documents and the words extracted from them to improve the accuracy of clustering. WCCluster poses co-clustering as a bipartite graph partitioning problem, and uses a spectral graph algorithm in which proper singular vectors are utilized as a real relaxation to the NP-complete graph partitioning problem. To evaluate the proposed approach, we design comprehensive experiments based on a real-world data set, and the results demonstrate the effectiveness of WCCluster.
共同聚类WSDL文档以引导服务发现
随着web服务的日益普及,如何有效地定位所需的服务是必不可少的。近年来,利用WSDL文档将web服务集群到功能相似的服务组中正在成为主流。然而,大多数现有算法单独对WSDL文档进行聚类,忽略单词的分布,而不是同时对它们进行聚类。与传统的单向聚类算法不同,本文提出了一种新的方法WCCluster,将WSDL文档和从中提取的单词同时聚类,以提高聚类的准确性。WCCluster将共聚类作为一个二部图划分问题,并使用谱图算法,其中利用适当的奇异向量作为np完全图划分问题的实松弛。为了评估所提出的方法,我们设计了基于真实数据集的综合实验,结果证明了WCCluster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。
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