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Effective Mashup Service Clustering Method by Exploiting LDA Topic Model from Multiple Data Sources

机译:利用来自多个数据源的LDA主题模型有效的Mashup服务聚类方法

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Mashup is emerging as a promising software development method for allowing software developers to compose existing Web APIs to create new or value-added composite Web services. However, the rapid growth in the number of available Mashup services makes it difficult for software developers to select a suitable Mashup service to satisfy their requirements. Even though clustering based Mashup discovery technique shows a promise of improving the quality of Mashup service discovery, Mashup service clustering with high accuracy for discovery of Mashup services is still a challenge problem. In this paper, we propose a novel Mashup service clustering method for Mashup service discovery with high accuracy by exploiting LDA topic model built from multiple data sources. It enables to infer topic probability distribution of Mashup services, which serves as a basis of computation of similarity of Mashup services. K-means and Agnes algorithm are used to perform Mashup service clustering in terms of their similarities. Compared with other service clustering approaches, experimental results show that our approach achieves significant improvement in terms of precision, recall and F-measure rate, which will improve Mashup service discovery.
机译:Mashup逐渐成为一种有前途的软件开发方法,它允许软件开发人员组合现有的Web API来创建新的或增值的复合Web服务。但是,可用的Mashup服务数量的快速增长使软件开发人员很难选择合适的Mashup服务来满足他们的要求。尽管基于集群的Mashup发现技术显示出有望提高Mashup服务发现质量的希望,但是用于Mashup服务发现的高精度Mashup服务集群仍然是一个难题。在本文中,我们通过利用从多个数据源构建的LDA主题模型,提出了一种用于Mashup服务发现的高精度Mashup服务聚类新方法。它可以推断Mashup服务的主题概率分布,这是计算Mashup服务相似度的基础。就它们的相似性而言,K-means和Agnes算法用于执行Mashup服务聚类。与其他服务聚类方法相比,实验结果表明,该方法在准确性,查全率和F度量率方面均取得了显着改善,这将改善Mashup服务发现。

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