Discovering Communities of Interest in a Tagged On-Line Environment

W. C. Kammergruber, Maximilian Viermetz, Cai-Nicolas Ziegler
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引用次数: 6

Abstract

Tagging and social networks have come into increasing use in concert with the rise of collaborative and interactive on-line media. The focus of tagging is herein twofold: First of all the plain annotation of existing data by a governing instance in order to increase the semantic content of unstructured data, and secondly the application of such meta-information by a community or a group of like minded users. The information contained in such social tagging reflects the point of view and understanding of the community, presenting a valuable source of information for the discovery of community structure,content and intent. This paper proposes an approach aimed at the use of community based tagging to address problems in link prediction and the discovery of complex user groups in a fleeting and unstructured web-based environment. The ideas presented in this paper are applied to a real world scenario, and the results show a distinct opportunity in community detection and support. This result will be incorporated into emerging knowledge management systems within Siemens AG in the near future.
在标记的在线环境中发现感兴趣的社区
随着协作和互动在线媒体的兴起,标签和社交网络的使用也越来越多。标签的重点有两个方面:首先是由治理实例对现有数据进行普通注释,以增加非结构化数据的语义内容;其次是由一个社区或一组志同道合的用户对这些元信息的应用。这种社会标签所包含的信息反映了对社区的看法和理解,为发现社区的结构、内容和意图提供了宝贵的信息来源。本文提出了一种方法,旨在使用基于社区的标签来解决链接预测和在短暂和非结构化的基于web的环境中发现复杂用户组的问题。本文提出的思想应用于现实世界的场景,结果显示在社区检测和支持方面有明显的机会。在不久的将来,这一成果将被纳入西门子股份公司新兴的知识管理系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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