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新浪微博用户及其微博特征分析
引用本文:梁宏,许南山,卢罡.新浪微博用户及其微博特征分析[J].计算机工程与应用,2015,51(7):141-148.
作者姓名:梁宏  许南山  卢罡
作者单位:北京化工大学 信息科学与技术学院,北京 100029
基金项目:中央高校基本科研业务费项目(No.ZZ1224)。
摘    要:基于新浪微博用户之间的关注关系网络,分析了衡量微博用户影响力的三个指标--粉丝数、User PR值以及用户活跃度,发现粉丝数分布和User PR值分布均服从幂律分布,活跃度分布不同于前两种分布。分别对三种排名靠前的用户及其发布的微博进行分析,发现排名靠前的用户中,User PR值的认证用户多于粉丝数;活跃度排名靠前的用户在广告营销活动中受到广泛的青睐;新浪微博用户乐于转发和评论他人的微博,微博中嵌入了大量的图片、视频和链接。

关 键 词:新浪微博  UserPR值  用户活跃度  用户影响力  幂律分布  

Analysis of users and users’ Weibo information in Sina Weibo
LIANG Hong,XU Nanshan,LU Gang.Analysis of users and users’ Weibo information in Sina Weibo[J].Computer Engineering and Applications,2015,51(7):141-148.
Authors:LIANG Hong  XU Nanshan  LU Gang
Affiliation:Information Science and Technology College, Beijing University of Chemical Technology, Beijing 100029, China
Abstract:Based on the relationship network of Weibo users, the number of fans, User PR values and users’ activities are considered as measurements of users’ influence on Weibo with the distributions of the three factors. Results show that both the distributions of the number of fans and User PR values follow power-law distribution. It is found that there are much more verified users in top User PR ranking list than in fans ranking list and it is suggested that top activity users are much more popular in advertisement campaign after analyzes the top users and their posts in fans ranking, User PR ranking and activity ranking. It is also found that Sina Weibo users prefer to repost and comment on other users’ Weibo. There are a large number of images, videos and links on Sina Weibo, and most of them are reposted from another user.
Keywords:Sina Weibo  User PR values  user activity  user influence  power-law distribution
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