Cyberaggression has been found in various contexts and online social platforms, and modeled on different data using state-of-the-art machine and deep learning algorithms to enable automatic detection and blocking of this behavior. Users can be influenced to act aggressively or even bully others because of elevated toxicity and aggression in their own (online) social circle. In effect, this behavior can propagate from one user and neighborhood to another, and therefore, spread in the network. Interestingly, to our knowledge, no work has modeled the network dynamics of aggressive behavior. In this paper, we take a first step towards this direction, by studying propagation of aggression on social media. We look into various opinion dynamics models widely used to model how opinions propagate through a network. We propose ways to enhance these classical models to accommodate how aggression may propagate from one user to another, depending on how each user is connected to other aggressive or regular users. Through extensive simulations on Twitter data, we study how aggressive behavior could propagate in the network. We validate the models with ground truth crawled and annotated data, reaching up to 80% AUC. We discuss the results and implications of our work.
翻译:网络入侵在各种背景和在线社会平台中都发现了,并且以不同的数据为模型,使用最先进的机器和深层次的学习算法来模拟,以便能够自动检测和阻止这种行为。用户可能因为自身(在线)社会圈中的毒性和侵犯性而受到影响,从而受到攻击性甚至欺凌他人的影响。实际上,这种行为可以从一个用户和邻里传播到另一个用户,从而在网络中传播。有趣的是,根据我们的知识,没有工作模拟攻击行为的网络动态。在本文中,我们通过研究在社交媒体上传播攻击行为的方式,朝这个方向迈出第一步。我们广泛研究各种观点动态模型,用来模拟观点通过网络传播的方式。我们建议如何加强这些传统模型,以适应每个用户如何与其他攻击性或经常用户相连接。我们通过对推特数据的广泛模拟,研究如何在网络中传播攻击性的行为。我们用地面真理和附加说明性的数据验证模型,达到80%的ACU。我们讨论了我们工作的结果和影响。