一种新的基于双图卷积网络的Web服务分类框架

Xin Wang, Jin Liu, Xiao Liu, Xiaohui Cui, Hao Wu
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引用次数: 9

摘要

自动服务分类是服务发现和服务组合的基础。目前,许多从功能描述文档中提取特征的方法都存在数据稀疏性问题。然而,除了功能描述文档之外,Web API生态系统还积累了大量可用于提高Web服务(API)分类准确性的信息。目前,还没有一种统一的方法将功能描述文档与Web API生态系统中积累的其他信息源(如属性、交互和外部知识)结合起来进行API分类。为了解决这个问题,我们提出了一个双gcn框架,该框架可以通过区分API分类的功能描述文档和其他信息源(特别是本文默认的Mashup-API协同调用模式)来有效地抑制文本内容的噪声传播。这个框架是可扩展的,能够包含Web API生态系统中积累的不同信息源。在一个真实的公共数据集上的综合实验表明,我们提出的方法可以优于各种具有代表性的API分类方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Dual-Graph Convolutional Network based Web Service Classification Framework
Automated service classification is the foundation for service discovery and service composition. Currently, many existing methods extracting features from functional description documents suffer the problem of data sparsity. However, beside functional description documents, the Web API ecosystem has accumulated a wealth of information that can be used to improve the accuracy of Web service (API) classification. At the moment, there is an absence of a unified way to combine functional description documents with other sources of information (e.g., attributes, interactions and external knowledge) accumulated in the Web API ecosystem for API classification. To address this issue, we present a dual-GCN framework that can effectively suppress the noise propagation of textual contents by distinguishing functional description documents and other sources of information (specifically Mashup-API co-invocation patterns by default in this paper) for API classification. This framework is extensible with the ability to include different sources of information accumulated in the Web API ecosystem. Comprehensive experiments on a real-world public dataset demonstrate that our proposed method can outperform various representative methods for API classification.
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