异构图注意网络增强的Web服务分类

Mi Peng, Buqing Cao, Junjie Chen, Guosheng Kang, Jianxun Liu, Yiping Wen
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引用次数: 1

摘要

服务分类有助于提高服务发现的效率。以往的方法主要是基于同构图的服务分类。然而,由于现实世界中服务数据的异构性,这些方法不能很好地处理服务关系网络中多种类型的节点和边缘,缺乏丰富语义信息的利用。异构图关注网络的出现可以有效地解决这些问题,因为它可以更完整、自然地从服务关系网络中提取关系和节点,并很好地区分相邻节点和元路径的重要性。为此,本文提出了一种异构图关注网络增强的Web服务分类方法。该方法首先利用复合服务信息、原子服务信息及其属性信息构建异构信息服务网络;然后,根据不同的语义信息定义元路径,利用交换矩阵和基于元路径的相似性度量技术构建服务的相似矩阵;最后,设计两层关注模型,计算服务的节点级关注和元路径级关注,从而获得服务的节点级表示和元路径级表示,生成更具代表性的服务嵌入特征,实现更准确的服务分类。最后,在ProgrammableWeb真实数据集上的实验结果表明,本文方法在准确率、召回率和宏F1方面都优于GAT、GCN、Metapath2Vec、Node2Vec、BiLSTM和LDA,提高了Web服务分类的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Heterogeneous Graph Attention Network-Enhanced Web Service Classification
Service classification helps to improve the efficiency of service discovery. Previous methods mainly focus on homogeneous graph-based service classification. However, due to the heterogeneity of service data in the real world, these methods cannot deal with many types of nodes and edges in service relationship network well, and lack the usage of rich semantic information. The emergence of heterogeneous graph attention network can effectively solve the problems, because it can more completely and naturally extracts the relationships and nodes from the service relationship network, and well distinguishes the importance of neighbor nodes and meta paths. Therefore, this paper proposes a heterogeneous graph attention network-enhanced Web service classification method. In this method, firstly, a heterogeneous information service network is constructed by using composite service information, atomic service information and their attribute information. Then, the meta path is defined according to different semantic information, and the similarity matrix of service is constructed by using the commuting matrix and the similarity measurement technology based on meta path. Finally, a two-layer attention model is designed to calculate the node-level attention and meta path-level attention of the service, so as to obtain the node-level representations and meta path-level representations of the services, and generate more representative embedding features of services for achieving more accurate service classification. Finally, the experimental results on real datasets of ProgrammableWeb show that our method is better than GAT, GCN, Metapath2Vec, Node2Vec, BiLSTM and LDA in terms of precision, recall and macro F1, and improves the accuracy of Web service classification.
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