社群关系在Web服务发现与推荐中的研究现状分析
Analysis of Research Status of Social Relationships in Web Service Discovery and Recommendation
DOI: 10.12677/CSA.2019.912244, PDF,   
作者: 田 浩*, 李 显:湖北经济学院信息与通信工程学院,湖北 武汉
关键词: 社群关系Web服务服务发现服务推荐分析Social Relationships Web Services Service Discovery Service Recommendation Analysis
摘要: 利用社群关系是提升Web服务发现和服务推荐性能的重要手段,也是目前的研究热点之一。本文对Web服务应用环境下社群关系的研究现状进行了系统的分析。阐述了社群关系的内涵,将现有方法进行了分类,通过分析其中典型方法的原理和应用情况,总结了每类方法的特点,指出了未来研究趋势及其需要解决的问题。
Abstract: Using social relationship is an important means to improve the performance of Web service discovery and Web service recommendation. This paper makes a systematic analysis of the research status of social relations in Web service application environment. This paper expounds the connotation of social relations, classifies the existing methods, analyzes the principle and application of the typical methods, summarizes the characteristics of each method,, and points out the future research trend and the problems to be solved.
文章引用:田浩, 李显. 社群关系在Web服务发现与推荐中的研究现状分析[J]. 计算机科学与应用, 2019, 9(12): 2183-2190. https://doi.org/10.12677/CSA.2019.912244

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