服务社区学习:一种协同聚类方法

Qi Yu, M. Rege
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引用次数: 45

摘要

高效、准确地发现用户所需的Web服务是实现服务计算全部潜力的关键组件。然而,考虑到庞大且快速增长的服务空间,服务发现是一项非常重要的任务。同时,Web服务通常是自治的,并且是先验未知的。这进一步使服务发现问题复杂化。提出了一种从异构服务空间生成同构社区的服务社区学习算法。这可以极大地促进服务发现过程,因为用户只需要在他们想要的服务社区中进行搜索。社区学习算法的一个关键组成部分是利用服务和操作之间的二元关系的共同聚类方案。在综合Web服务和真实Web服务上的实验结果都证明了所提出的服务社区学习算法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On Service Community Learning: A Co-clustering Approach
Efficient and accurate discovery of user desired Web services is a key component for achieving the full potential of service computing. However, service discovery is a non-trivial task considering the large and fast growing service space. Meanwhile, Web services are typically autonomous and a priori unknown. This further complicates the service discovery problem. We propose a service community learning algorithm that can generate homogeneous communities from the heterogeneous service space. This can greatly facilitate the service discovery process as the users only need to search within their desired service communities. A key ingredient of the community learning algorithm is a co-clustering scheme that leverages the duality relationship between services and operations. Experimental results on both synthetic and real Web services demonstrate the effectiveness of the proposed service community learning algorithm.
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