0


在线社交网络中用户内容生成模式分析

Analyzing Patterns of User Content Generation in Online Social Networks
课程网址: http://videolectures.net/kdd09_guo_apou/  
主讲教师: Lei Guo
开课单位: 雅虎公司
开课时间: 2009-09-14
课程语种: 英语
中文简介:
各种在线社交网络(OSN)在互联网上得到了迅速发展。研究人员分析了这种OSN的不同特性,主要集中在网络的形成和演化以及网络上的信息传播。在博客和问答系统等知识共享OSN中,用户如何参与网络以及用户如何“生成/贡献”知识对于网络的持续健康发展至关重要。然而,相关讨论尚未在研究文献中报道。在这项工作中,我们从三个流行的知识共享OSN(包括一个博客系统、一个社交书签共享网络和一个回答问题的社交网络)来实证研究工作负载,以检验这些特性。我们的分析一致地表明:(1)用户在这些网络中的发布行为表现出强烈的每日和每周模式,但这些OSN中的用户活动时间不遵循指数分布;(2)这些OSN中的用户发布行为遵循拉伸指数分布,而不是幂律分布,表明少数核心用户的影响不能主导网络;(3)用户贡献对这些OSN中高质量和费力内容的分布对于拉伸指数分布具有较小的拉伸因子。我们的研究提供了深入了解用户活动模式,并为进一步了解这些OSNs的各种特性奠定了分析基础。
课程简介: Various online social networks (OSNs) have been developed rapidly on the Internet. Researchers have analyzed different properties of such OSNs, mainly focusing on the formation and evolution of the networks as well as the information propagation over the networks. In knowledge-sharing OSNs, such as blogs and question answering systems, issues on how users participate in the network and how users ``generate/contribute'' knowledge are vital to the sustained and healthy growth of the networks. However, related discussions have not been reported in the research literature. In this work, we empirically study workloads from three popular knowledge-sharing OSNs, including a blog system, a social bookmark sharing network, and a question answering social network to examine these properties. Our analysis consistently shows that (1) users' posting behavior in these networks exhibits strong daily and weekly patterns, but the user active time in these OSNs does not follow exponential distributions; (2) the user posting behavior in these OSNs follows stretched exponential distributions instead of power-law distributions, indicating the influence of a small number of core users cannot dominate the network; (3) the distributions of user contributions on high-quality and effort-consuming contents in these OSNs have smaller stretch factors for the stretched exponential distribution. Our study provides insights into user activity patterns and lays out an analytical foundation for further understanding various properties of these OSNs.
关 键 词: 计算机科学; 网络分析; 社交网络
课程来源: 视频讲座网
最后编审: 2020-01-13:chenxin
阅读次数: 45