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现代图书情报技术  2014, Vol. 30 Issue (11): 10-16     https://doi.org/10.11925/infotech.1003-3513.2014.11.02
  数字图书馆 本期目录 | 过刊浏览 | 高级检索 |
社会化网络中信任推荐研究综述
谭学清, 黄翠翠, 罗琳
武汉大学信息管理学院 武汉 430072
A Review of Research on Trust Recommendation in Social Networks
Tan Xueqing, Huang Cuicui, Luo Lin
School of Information Management, Wuhan University, Wuhan 430072, China
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摘要 

[目的] 探讨社会化网络的发展对解决传统的个性化推荐系统面临的诸如数据稀疏性、冷启动等问题的作用.[文献范围] 以社会化网络作为分析背景, 从Springer、Google Scholar检索2004年至今国内外关于信任推荐的研究文献.[方法] 基于信任与不信任两方面对相关文献进行梳理总结, 形成综述.[结果] 指出当前研究中存在信任计算方法不足, 缺乏对不信任因素的深入研究等问题.[局限] 由于研究因素单一, 应结合社会化网络中出现的其他因素进行深入对比分析.[结论] 未来的研究可以从基于情境信任的推荐、挖掘社会化网络中的弱连接关系等方向开展.

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谭学清
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黄翠翠
关键词 个性化推荐社会化网络信任推荐    
Abstract

[Objective] Discuss the role of social networks to solve problems such as data sparseness and cold start of traditional personalized recommendation systems. [Coverage] This paper retrieves research literatures about trust recommendation at home and abroad from Springer and Google Scholar since 2004. [Methods] It summarizes the related literatures from perspectives of trust and distrust. [Results] Based on the summary, this paper demonstrates the existing problems such as the deficiency of calculation method for trust and lack of in-depth study of distrust and so on. [Limitations] Other factors in social networks should be combined with trust in an in-depth comparative analysis. [Conclusions] Context-aware trust recommendation, mining the value of weak relationship in social networks can be new valuable research directions in future.

Key wordsPersonalized recommendation    Social networks    Trust recommendation
收稿日期: 2014-05-12      出版日期: 2014-12-18
:  G354  
基金资助:

本文系国家社会科学基金项目"数字图书馆标签系统的语义挖掘研究"(项目编号:12CTQ003)的研究成果之一.

通讯作者: 黄翠翠 E-mail: huangcui.happy@163.com     E-mail: huangcui.happy@163.com
作者简介: 作者贡献声明: 谭学清: 对重要的学术内容进行关键性补充修改, 负责论文最后审阅及定稿;黄翠翠: 设计构思论文, 收集、整理、分析相关文献, 撰写论文初稿;罗琳: 提出论文研究思路, 设计研究方案及相关的修改工作.
引用本文:   
谭学清, 黄翠翠, 罗琳. 社会化网络中信任推荐研究综述[J]. 现代图书情报技术, 2014, 30(11): 10-16.
Tan Xueqing, Huang Cuicui, Luo Lin. A Review of Research on Trust Recommendation in Social Networks. New Technology of Library and Information Service, 2014, 30(11): 10-16.
链接本文:  
https://manu44.magtech.com.cn/Jwk_infotech_wk3/CN/10.11925/infotech.1003-3513.2014.11.02      或      https://manu44.magtech.com.cn/Jwk_infotech_wk3/CN/Y2014/V30/I11/10

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