一种改进的微博社区检测算法

Z. Ma, Xin Shu, Guanghui Yan
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引用次数: 0

摘要

微博在全球越来越流行,它不仅颠覆了传统的传播方式,也改变了整个媒体环境。发现微博社区是很有价值的。然而,传统的社区发现算法一般都是基于链接或兴趣来识别传统的单一社区,在有效检测微博社区方面受到限制。有时用户之间的交互以用户的社交信息为特征,但在微博中很难获得。本文介绍了基于微博中应用的一种新的社交网络特征“跟随”的社交网络模型。在标签传播算法的基础上,采用用户关系(定义为话题关系和超链接关系的相互作用),提出了一种微博标签传播算法来检测社区。在真实微博数据集上的实验结果验证了该方法的合理性和有效性。在真实微博数据集上的实验结果证明了我们的方法的有效性和效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An improved algorithm on micro-blog community detection
Micro-blogging is becoming increasingly prevalent in global world, which not only subverts the traditional means of communication, but also changes the entire media environment. Discovery of micro-blog community is of great value. However, the classical community discovery algorithms are generally based on links or interests only to recognize the traditional single community and limited to detect micro-blog communities effectively. Sometimes interaction among users is characterized by user's social information, but it's difficult to obtain in micro-blog. This work introduces the social network model based on the new social-networking characteristic called "following" which is employed in micro-blog. Based on the label propagation algorithm, we adopt the users' relationship, which was defined as the interaction from topic and hyperlink relations, and propose a micro-blog label propagation algorithm to detect communities. The experiment results on a real-world micro-blog dataset illustrate the reasonable and effective of our method. Experiment results over a real-world micro-blog data set illustrate the effectiveness and efficiency provided by our approach.
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