XBully:多模态环境中的网络欺凌检测

Lu Cheng, Jundong Li, Yasin N. Silva, Deborah L. Hall, Huan Liu
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引用次数: 74

摘要

在过去的十年中,研究表明网络欺凌在青少年中非常普遍,并引起了社会的严重关注。网络欺凌最普遍的社交媒体平台(如Instagram、Facebook、Twitter)上的信息本质上是多模态的,但大多数现有的网络欺凌识别工作都只关注于建立通用分类模型,这些模型完全依赖于对在线社交媒体会话(如帖子)的文本分析。尽管在经验上取得了成功,但这些努力忽略了社交媒体数据中体现的多模态信息(如图像、视频、用户资料、时间和位置),因此无法全面理解网络欺凌。通常,当来自不同模式的信息一起呈现时,它通常会揭示关于应用领域的互补见解,并促进更好的学习性能。在本文中,我们通过以协作的方式利用社交媒体数据,研究了多模态环境下网络欺凌检测的新问题。然而,由于各种模式之间的跨模式相关性和不同社交媒体会话之间的结构依赖关系的复杂组合,以及不同模式的不同属性信息,这一任务具有挑战性。为了应对这些挑战,我们提出了一种新的网络欺凌检测框架XBully,它首先将多模态社交媒体数据重新表述为异构网络,然后旨在学习其上的节点嵌入表示。对真实世界多模态社交媒体数据集的广泛实验评估表明,XBully框架优于最先进的网络欺凌检测模型。
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XBully: Cyberbullying Detection within a Multi-Modal Context
Over the last decade, research has revealed the high prevalence of cyberbullying among youth and raised serious concerns in society. Information on the social media platforms where cyberbullying is most prevalent (e.g., Instagram, Facebook, Twitter) is inherently multi-modal, yet most existing work on cyberbullying identification has focused solely on building generic classification models that rely exclusively on text analysis of online social media sessions (e.g., posts). Despite their empirical success, these efforts ignore the multi-modal information manifested in social media data (e.g., image, video, user profile, time, and location), and thus fail to offer a comprehensive understanding of cyberbullying. Conventionally, when information from different modalities is presented together, it often reveals complementary insights about the application domain and facilitates better learning performance. In this paper, we study the novel problem of cyberbullying detection within a multi-modal context by exploiting social media data in a collaborative way. This task, however, is challenging due to the complex combination of both cross-modal correlations among various modalities and structural dependencies between different social media sessions, and the diverse attribute information of different modalities. To address these challenges, we propose XBully, a novel cyberbullying detection framework, that first reformulates multi-modal social media data as a heterogeneous network and then aims to learn node embedding representations upon it. Extensive experimental evaluations on real-world multi-modal social media datasets show that the XBully framework is superior to the state-of-the-art cyberbullying detection models.
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