基于RGPS和BTM的语义增强Web服务聚类方法

Fang Xie Fang Xie, Jing-Liang Chen Fang Xie, Yi Zhu Jing-Liang Chen, Hong-Yan Zheng Yi Zhu
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引用次数: 0

摘要

为了克服服务描述文本中的数据稀疏性问题,提高web服务聚类质量,提出了一种基于RGPS (Role-Goal-Process-Service)框架和双术语主题模型(BTM)的语义增强web服务聚类方法。首先,我们根据RGPS元模型框架扩展了服务描述文本的特征。并利用BTM生成服务潜在特征。然后,我们对生成的特征使用K-means。在服务注册表PWeb上的实验结果表明,该方法在纯度和熵方面都能获得较好的聚类性能。与K-means、Agglomerative和LDA (Latent Dirichlet Allocation)等基线方法相比,该方法具有很高的效率。提高了服务集群的性能,为服务组织和服务推荐奠定了基础。
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A Web Service Clustering Method with Semantic Enhancement Based on RGPS and BTM
In order to overcome the data sparsity problem in service description text and to improve the web service clustering quality, we propose a web service clustering method with semantic enhancement based on RGPS (Role-Goal-Process-Service) Framework and Bi-term Topic Model (BTM). First, we extend service description text’s feature according to RGPS meta-model framework. Also, we generate the service latent feature by BTM. Then, we employ K-means on the generated features. The results of experiments on service registry PWeb show that this method can get better clustering performance in purity and entropy. It is proved that this method has great efficiency compared with the baseline methods K-means, Agglomerative and LDA (Latent Dirichlet Allocation). This paper enhances the service clustering performance and creates foundation work for service organization and recommendation.  
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