基于异构图注意网络的Web服务链路预测

Wenhui He, Chunhe Xia, Zhong Li, Xiaochen Liu, Tianbo Wang
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引用次数: 2

摘要

随着服务计算的兴起,web服务的数量和多样性不断增加,搜索合适的服务成为一项棘手的任务。服务组合、服务选择和服务推荐已成为服务计算的研究热点。服务链接预测作为服务网络的基础研究,用于探索服务之间的组合模式,促进服务组合、服务选择和推荐的发展。然而,现有的链路预测方法主要基于人工建模和推导,不能充分利用全局结构信息,在复杂网络中表现不佳。业务链路预测的难点在于业务网络的异构性和稀疏性。为此,我们提出了一种基于异构图关注网络的web服务链接预测方法。通过分析服务之间的交互关系,选择与服务链接相关联的5种邻居类型,并采用两种关注级别来学习邻居的重要性并计算服务的嵌入。此外,为了提高准确率,我们设计了service - textrank算法来提取服务描述的关键信息。在真实世界数据上的大量实验结果-可编程web验证了我们方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Heterogeneous Graph Attention Network-Based Web Service Link Prediction
With the rise of service computing, the increasing number and diversity of web services make it an intractable task to search for suitable services. Service composition, service selection and recommendation have become the focus of service computing. As the fundamental research of service network, service link prediction is used to explore the composition mode between services, which can facilitate the development of service composition, service selection and recommendation. However, the existing link prediction methods are mainly based on manual modeling and derivation, which cannot make full use of the global structure information and perform poorly in complex networks. The challenging problem in service link prediction is the heterogeneity and sparseness of the service network. Therefore, we propose a novel web service link prediction method based on a heterogeneous graph attention network. By analyzing the interaction between services, five types of neighbors that are associated with service links are chosen, and two levels of attention are applied to learn the importance of neighbors and calculate the embedding of services. In addition, in order to improve accuracy, we design a Service-TextRank algorithm to extract the key information of the service description. Extensive experimental results on real-world data-ProgrammableWeb validate the effectiveness of our approach.
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