Service Recommendation for Composition Creation based on Collaborative Attention Convolutional Network

Ruyu Yan, Yushun Fan, Jia Zhang, Junqi Zhang, Haozhe Lin
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引用次数: 6

Abstract

Service recommendation for composition creation is a widely applied technique, which expedites mashup development by reusing existing services. The core of service recommendations is to simultaneously understand user needs as well as the functions of available services. However, the descriptions provided by users and service providers may not always be accurate or up to date, which poses significant challenges to composition creating. To tackle this problem, in this paper we propose a deep learning-based service recommendation framework named coACN, short for Collaborative Attention Convolutional Network, which can effectively learn the bilateral information toward service recommendation. On the one hand, a domain-level attention module is constructed to refine user needs embeddings by drawing messages from related service domains. On the other hand, a graph convolutional network is established to excavate the service-composition graph and fuse structured information into service embeddings. For a service node in the graph, the information of its compositions as its first-order neighbor nodes is used to supplement the latest functions and features of the service; and the information of the services as its second-order neighbor nodes may bring collaborative relationships into the service. Extensive experiments on the real-world ProgrammableWeb dataset show the significant improvement of our proposed coACN framework over state-of-the-art methods.
基于协同注意卷积网络的作文创作服务推荐
用于组合创建的服务推荐是一种广泛应用的技术,它通过重用现有服务来加快mashup开发。服务推荐的核心是同时了解用户需求和可用服务的功能。然而,用户和服务提供者提供的描述可能并不总是准确或最新的,这给组合创建带来了重大挑战。为了解决这一问题,本文提出了一种基于深度学习的服务推荐框架coACN (Collaborative Attention Convolutional Network,协同注意卷积网络),该框架能够有效地学习服务推荐的双边信息。一方面,构建领域级关注模块,通过绘制相关服务领域的消息来细化用户需求嵌入;另一方面,建立图卷积网络,挖掘服务组成图,将结构化信息融合到服务嵌入中。对于图中的服务节点,利用其组成信息作为其一阶邻居节点,补充该服务的最新功能和特征;服务的信息作为它的二阶邻居节点,可以将协作关系引入到服务中。在真实世界的ProgrammableWeb数据集上进行的大量实验表明,我们提出的coACN框架比最先进的方法有了显著的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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