An essential topic in online social network security is how to accurately detect bot accounts and relieve their harmful impacts (e.g., misinformation, rumor, and spam) on genuine users. Based on a real-world data set, we construct behavioral sequences from raw event logs. After extracting critical characteristics from behavioral time series, we observe differences between bots and genuine users and similar patterns among bot accounts. We present a novel social bot detection system BotShape, to automatically catch behavioral sequences and characteristics as features for classifiers to detect bots. We evaluate the detection performance of our system in ground-truth instances, showing an average accuracy of 98.52% and an average f1-score of 96.65% on various types of classifiers. After comparing it with other research, we conclude that BotShape is a novel approach to profiling an account, which could improve performance for most methods by providing significant behavioral features.
翻译:在在线社交网络安全中,一个重要的主题是如何准确地检测机器人账户,并减轻它们对真实用户的有害影响(如错误信息、谣言和垃圾邮件)。基于一个真实的数据集,我们从原始事件日志中构建了行为序列。在从行为时间序列中提取关键特征之后,我们观察到机器人和真实用户之间的差异以及机器人账户之间的相似模式。我们提出了一个新的社交机器人检测系统 BotShape,通过自动捕获行为序列和特征,为分类器检测机器人账户。我们在包含真实结果的情况下评估了系统的检测性能,结果显示对各种类型的分类器实现了98.52%的平均准确率和96.65%的平均f1分数。在与其他研究进行比较后,我们得出了结论:BotShape是一种描述账户的新方法,它可以通过提供重要的行为特征来提高大多数方法的性能。