Twitter中机器人检测和姿态分类的关联亲和因子分析

Saad Sadiq, Yilin Yan, Asia Taylor, M. Shyu, Shu‐Ching Chen, D. Feaster
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引用次数: 21

摘要

Facebook、Twitter和Snapchat等社交互动网站的流行受到了这些系统上不受欢迎和令人不安的身体激增的挑战。这包括垃圾邮件发送者、恶意软件系统和其他内容污染者。值得注意的是,在2016年美国总统大选中,每天发布450条推文的高度自动化账户几乎占推特总发行量的18%。我们还观察到,那些被称为机器人的破坏性系统更倾向于传播负面新闻,而不是正面信息。本文介绍了一种用于姿态检测和机器人识别的新框架——关联亲和因子分析(AAFA)。使用AAFA,提出的框架可以从机器人中识别真实的人,并检测双相情感的立场。2016年美国总统大选被用作测试用例,因为它具有重要而独特的反事实属性。结果表明,与现有的几种最先进的方法相比,我们提出的AAFA框架具有较高的精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AAFA: Associative Affinity Factor Analysis for Bot Detection and Stance Classification in Twitter
The rise in popularity of social interacting websites such as Facebook, Twitter, and Snapchat has been challenged by the upsurge of unwelcomed and troubling bodies on these systems. This includes spam senders, malware systems, and other content contaminators. It is noted that highly automated accounts with 450 tweets per day produced almost 18% of entire Twitter circulation in the 2016 U.S. Presidential election. It is also observed that those disruptive systems called bots are inclined more towards circulating negative news than positive information. This paper introduces a novel framework named Associative Affinity Factor Analysis (AAFA) designed for stance detection and bot identification. Using AAFA, the proposed framework identifies real people from bots and detects the stance in bipolar affinities. The 2016 U.S. Presidential election campaign was used as a test use case because of its significant and unique counter-factual properties. The results show that our proposed AAFA framework achieves high accuracy when compared to several existing state-of-theart methods.
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