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Preprocessing framework for Twitter bot detection

机译:Twitter bot检测的预处理框架

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One of the important problems in social media platforms like Twitter is the large number of social bots or sybil accounts which are controlled by automated agents, generally used for malicious activities. These include directing more visitors to certain websites which can be considered as spam, influence a community on a specific topic, spread misinformation, recruit people to illegal organizations, manipulating people for stock market actions, and blackmailing people to spread their private information by the power of these accounts. Consequently, social bot detection is of great importance to keep people safe from these harmful effects. In this study, we approach the social bot detection on Twitter as a supervised classification problem and use machine learning algorithms after extensive data preprocessing and feature extraction operations. Large number of features are extracted by analysis of Twitter user accounts for posted tweets, profile information and temporal behaviors. In order to obtain labeled data, we use accounts that are suspended by Twitter with the assumption that majority of these are social bot accounts. Our results demonstrate that our framework can distinguish between bot and normal accounts with reasonable accuracy.
机译:Twitter之类的社交媒体平台中的重要问题之一是,由自动代理控制的大量社交机器人或sybil帐户(通常用于恶意活动)。这些措施包括将更多的访问者引导到可以被视为垃圾邮件的某些网站,在特定主题上影响社区,散布错误信息,向非法组织招募人员,操纵人们进行股票交易以及通过权力勒索人们以传播其私人信息这些帐户。因此,社交机器人检测对于确保人们免受这些有害影响非常重要。在这项研究中,我们将Twitter上的社交机器人检测作为有监督的分类问题,并在进行了大量数据预处理和特征提取操作之后使用机器学习算法。通过分析Twitter用户帐户中发布的推文,配置文件信息和时间行为,可以提取大量功能。为了获得标记的数据,我们使用Twitter暂停的帐户,并假设其中大多数是社交机器人帐户。我们的结果表明,我们的框架可以合理合理地区分漫游器帐户和普通帐户。

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