基于主题建模的社会网络分析

M-H. C. Nguyen, Thanh Ho, P. Do
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引用次数: 12

摘要

了解社交网络中讨论的内容是一个令人不安的问题,但它为不同领域带来了很多好处,例如营销,教育,社会趋势,安全。为了构建支持产品在社交网络中营销的系统,我们开发了基于内容的社交网络分析模型,以找出讨论的主题。该系统包括信息提取、话题发现和话题自动标注等步骤,其中注意了时间因素。系统以147个用户讨论的11945封电子邮件的安然语料库为实验对象,估计了50个主题,发现了许多有用的主题,开辟了新的研究和应用方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Social networks analysis based on topic modeling
Understanding the discussed content in social networks is an uneasy problem but brings a lot of advantages for different fields, such as marketing, education, social trends, security. To build up the system for supporting products marketing in social networks, we develop models of content-based social networks analysis in order to find out the discussed topics. The system consists of steps, such as extracting messages, discovering and automatically labeling the discussed topics, in which we pay attention to time factor. Experimented with the Enron corpus containing 11,945 e-mails discussed by 147 users and estimated 50 topics, the system has found out many useful topics and opened new research and application directions.
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