Litcius/Paper detail

HENIN: Learning Heterogeneous Neural Interaction Networks for Explainable Cyberbullying Detection on Social Media

Hsin-Yu Chen, Cheng–Te Li

202028 citationsDOIOpen Access PDF

Abstract

In the computational detection of cyberbullying, existing work largely focused on building generic classifiers that rely exclusively on text analysis of social media sessions. Despite their empirical success, we argue that a critical missing piece is the model explainability, i.e., why a particular piece of media session is detected as cyberbullying. In this paper, therefore, we propose a novel deep model, HEterogeneous Neural Interaction Networks (HENIN), for explainable cyberbullying detection. HENIN contains the following components: a comment encoder, a post-comment co-attention sub-network, and session-session and post-post interaction extractors. Extensive experiments conducted on real datasets exhibit not only the promising performance of HENIN, but also highlight evidential comments so that one can understand why a media session is identified as cyberbullying.

Topics & Concepts

Session (web analytics)Computer scienceSocial mediaArtificial neural networkArtificial intelligenceEncoderDeep neural networksRecurrent neural networkMachine learningHuman–computer interactionWorld Wide WebOperating systemHate Speech and Cyberbullying DetectionSoftware Engineering ResearchTopic Modeling