计算机科学 ›› 2013, Vol. 40 ›› Issue (11): 126-130.

• 信息安全 • 上一篇    下一篇

新闻推荐的多维兴趣模型与传播分析

王冠楠,陈端兵,傅彦   

  1. 电子科技大学互联网科学中心 计算机科学与工程学院 成都611731;电子科技大学互联网科学中心 计算机科学与工程学院 成都611731;电子科技大学互联网科学中心 计算机科学与工程学院 成都611731
  • 出版日期:2018-11-16 发布日期:2018-11-16
  • 基金资助:
    本文受国家自然科学基金(60973069,90924011,60903073,60973120),华为高校合作基金(YBCB2011057)资助

Analysis of News Diffusion in Recommender Systems Based on Multidimensional Tastes

WANG Guan-nan,CHEN Duan-bing and FU Yan   

  • Online:2018-11-16 Published:2018-11-16

摘要: 如何将合适的信息推荐给合适的用户以满足用户的个性化需求,是推荐系统的基本问题。新兴的社会化推荐系统(social recommender system)通过兴趣相似的用户之间分享信息而达到个性化推荐的目的。使用多维兴趣向量刻画用户的兴趣,采用多智能体模型(multi-agent model)模拟,并引入用户和新闻的质量,分析了用户网络的结构特征以及质量因素对新闻推荐和传播的影响。实验结果表明:不同社区的主题不同,社区的中心用户兴趣专一,与社区的主题一致。此外,推荐中引入质量因素可以加快系统在高推荐成功率上的收敛速度,更能区分不同质量用户的粉丝数和不同质量新闻的传播深度与广度,增强了高质量用户和新闻的影响力,提高了系统中新闻推荐的专业水平。

关键词: 社会化推荐,多维兴趣,用户相似度,社区结构,新闻传播

Abstract: How to deliver the right information to the right person to meet the individual needs of users is a basic problem in recommender systems.The emerging social recommender systems are personalized ones with sharing information of similar interest users.Using multidimensional vectors to characterize the user’s interest,simulating with multi-agent model,and factoring the quality of the users and news into recommendation,this paper analyzed impact of leader-follower network the structure and the quality factors on the recommendations and diffusion of news.The results indicate that different communities have different themes,and the core users of communities not only concentrate on one category,but also share the same interest with the community theme.Additionally,introducing the quality of users and news into systems not only can speed up the convergence of higher success rate of recommendation,but also can distinguish the followers of different users and the behaviors of propagation of different news,while raising the influence of excellent users and news and improving the professional level of recommendation.

Key words: Social recommender systems,Multidimensional tastes,Similarity of users,Structure of communities,News diffusion

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