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Web service discovery using combined bi-term topic model and WDAG similarity

机译:使用组合的双向主题模型和WDAG相似性进行Web服务发现

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In recent years, many web services had been published by service providers. Finding similar web services to replace existing web services that a business actor owned has become a challenging task. This issue is identified as web service discovery problem. Two approaches to address this problem are measuring the semantic and structural similarity of web services. These approaches are performed by utilizing information in Web Service Definition Language document. This paper proposed a method which combined semantic and structural similarity of web services using Bi-term Topic Model (BTM) and WDAG similarity. In the proposed method, web service structure is modelled into Weighted Directed Acyclic Graph (WDAG). Then BTM is used to mine topic on the modelled WDAG. Jenson-Shannon divergence is used to calculate topic similarity and WDAG similarity is used to calculate the structure similarity of WDAG. The result of experiment shows that the proposed method is applicable for web service discovery with average precision 83.78% and average recall 91.79%.
机译:近年来,服务提供商已经发布了许多Web服务。寻找类似的Web服务来替换业务参与者拥有的现有Web服务已成为一项艰巨的任务。此问题被标识为Web服务发现问题。解决此问题的两种方法是测量Web服务的语义和结构相似性。这些方法是通过利用Web服务定义语言文档中的信息来执行的。提出了一种利用双向主题模型(BTM)和WDAG相似度将Web服务的语义和结构相似度相结合的方法。在提出的方法中,将Web服务结构建模为加权有向无环图(WDAG)。然后,将BTM用于在已建模的WDAG上挖掘主题。 Jenson-Shannon散度用于计算主题相似度,而WDAG相似度用于计算WDAG的结构相似度。实验结果表明,该方法适用于Web服务发现,平均精度为83.78%,平均召回率为91.79%。

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