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Lifelong Learning of Hate Speech Classification on Social Media

Jing Qian, Hong Wang, Mai ElSherief, Xifeng Yan

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Abstract

Existing work on automated hate speech classification assumes that the dataset is fixed and the classes are pre-defined. However, the amount of data in social media increases every day, and the hot topics changes rapidly, requiring the classifiers to be able to continuously adapt to new data without forgetting the previously learned knowledge. This ability, referred to as lifelong learning, is crucial for the realword application of hate speech classifiers in social media. In this work, we propose lifelong learning of hate speech classification on social media. To alleviate catastrophic forgetting, we propose to use Variational Representation Learning (VRL) along with a memory module based on LB-SOINN (Load-Balancing Self-Organizing Incremental Neural Network). Experimentally, we show that combining variational representation learning and the LB-SOINN memory module achieves better performance than the commonly-used lifelong learning techniques.

Topics & Concepts

ForgettingLifelong learningComputer scienceArtificial intelligenceRepresentation (politics)Artificial neural networkSocial mediaMachine learningWord (group theory)Natural language processingPsychologyLinguisticsCognitive psychologyWorld Wide WebPoliticsPedagogyPhilosophyLawPolitical scienceHate Speech and Cyberbullying DetectionNetwork Security and Intrusion DetectionAdversarial Robustness in Machine Learning
Lifelong Learning of Hate Speech Classification on Social Media | Litcius