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Web Service Recommendation via Combining Doc2Vec-Based Functionality Clustering and DeepFM-Based Score Prediction

机译:通过结合基于Doc2Vec的功能集群和基于DeepFM的分数预测来推荐Web服务

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摘要

Due to the rapid growth in both the number and diversity of Web services on the Internet, it becomes increasingly difficult for developer to find the desired and appropriate Web services for Mashup creation. Even if the existing approaches show improvements in Web APIs recommendation, it is still challenging to recommend Web APIs with high accuracy and good diversity. Some of them integrate functionality clustering and the quality of service to recommend Web APIs for Mashup creation, but do not consider the high-order composition interaction relationship among functionality information, quality attributes. In this paper, we propose a novel Web APIs recommendation method via integrating the functionality clustering of service and the quality of service. In this method, it firstly obtains the functionality clustering by using Doc2Vec to cluster the description document of Web APIs. Then, the deep factorization machine model is used to extract the multi-dimension quality attributes of service and mine the high-order composition interaction relationship between them. Finally, the comparative experiments are performed on ProgrammableWeb dataset and experimental results show that our method significantly improves the performance of Web API recommendation in term of precision, recall, purity, entropy, DCG and HMD.
机译:由于Internet上Web服务的数量和多样性的迅速增长,开发人员越来越难以找到用于创建Mashup的所需和适当的Web服务。即使现有方法在Web API推荐方面已显示出改进,但仍建议以高精度和良好的多样性推荐Web API仍然具有挑战性。它们中的一些集成了功能集群和服务质量,以推荐用于创建Mashup的Web API,但是没有考虑功能信息,质量属性之间的高阶组成交互关系。在本文中,我们通过集成服务的功能集群和服务质量提出了一种新颖的Web API推荐方法。在这种方法中,它首先通过使用Doc2Vec对Web API的描述文档进行聚类来获得功能聚类。然后,使用深度分解机模型提取服务的多维质量属性,并挖掘它们之间的高级组合交互关系。最后,在ProgrammableWeb数据集上进行了比较实验,实验结果表明,该方法在准确性,查全率,纯度,熵,DCG和HMD方面显着提高了Web API推荐的性能。

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