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Mashup Service Recommendation Based on User Interest and Social Network

机译:基于用户兴趣和社交网络的混搭服务推荐

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With the rapid development of Web2.0 and its related technologies, Mashup services (i.e., Web applications created by combining two or more Web APIs) are becoming a hot research topic. The explosion of Mashup services, especially the functionally similar or equivalent services, however, make services discovery more difficult than ever. In this paper, we present an approach to recommend Mashup services to users based on user interest and social network of services. This approach firstly extracts users' interests from their Mashup service usage history and builds a social network based on social relationships information among Mashup services, Web APIs and their tags. The approach then leverages the target user's interest and the social network to perform Mashup service recommendation. Large-scale experiments based on a real-world Mashup service dataset show that our proposed approach can effectively recommend Mashup services to users with excellent performance. Moreover, a Mashup service recommendation prototype system is developed.
机译:随着Web2.0及其相关技术的飞速发展,混搭服务(即通过组合两个或多个Web API创建的Web应用程序)正成为研究的热点。但是,Mashup服务(尤其是功能相似或等效的服务)的爆炸式增长使服务发现比以往更加困难。在本文中,我们提出了一种基于用户兴趣和服务社交网络向用户推荐Mashup服务的方法。这种方法首先从用户的Mashup服务使用历史中提取用户的兴趣,并基于Mashup服务,Web API及其标签之间的社交关系信息构建社交网络。然后,该方法利用目标用户的兴趣和社交网络来执行Mashup服务推荐。基于现实世界中的Mashup服务数据集的大规模实验表明,我们提出的方法可以有效地向性能优异的用户推荐Mashup服务。此外,开发了一个Mashup服务推荐原型系统。

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