通过社会群体分析发现论坛讨论中的政治倾向

Kang-Che Lee, M. Shan
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引用次数: 0

摘要

电子公告板系统(BBS)非常流行,它为用户提供了一个异步的、基于文本的交流信息和想法的环境。BBS由许多讨论板组成,每个讨论板都关注一个特定的主题。关于一个主题的讨论由种子文章组成,随后是一些响应种子文章或其他响应文章的文章。本文采用社会社区分析技术,从讨论中发现论坛内用户的政治倾向。我们首先提取用户之间的社交互动,例如用户之间的帖子“回复”和“倡导”。基于提取的社交交互,构建用户间的社交网络。在构建社会网络后,我们分别采用图划分、图着色和图聚类算法来发现社会社区。同一社区的用户具有更大的政治观点一致的潜力。通过使用这种方法,我们能够将用户划分为两个相反的群体,并有效地识别他们的政治倾向,而无需对讨论内容进行语言分析。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Discovering political tendency in bulletin board discussions by social community analysis
Bulletin Board System (BBS) is very popular and provide an asynchronous, text-based environment for users to exchange information and idea. A BBS consists of a number of discussion boards, each of which focuses on a particular subject. A discussion on a topic consists of a seed articles followed by some articles responsive to the seed article or other responsive articles. This paper investigates the social community analysis technique to discover the political tendency of users within the boards from discussions. We first extract the social interactions between users, such as "reply" and "advocate" of posts between users. A social network among users is constructed based on the extracted social interaction. After building the social network, we employ the graph partition, graph coloring, and graph clustering algorithms respectively to discover the social communities. Users of the same community have more potential of political opinion agreement with each other. By using this approach, we are able to partition users into two opposite groups and identify their political tendency effectively without linguistic analysis of discussion content.
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