Hate Speech
Hate speech, encompassing discriminatory and derogatory language targeting individuals or groups, is a significant online problem. Current research focuses on improving automated hate speech detection, employing various deep learning models like BERT, LSTM, and transformer-based architectures, often incorporating multimodal data (text and images) and addressing challenges like implicit hate, code-mixing, and cross-cultural variations. These efforts aim to enhance the accuracy and fairness of hate speech detection systems, ultimately contributing to safer online environments and informing content moderation strategies. The field also explores methods for generating counterspeech and mitigating biases within detection models.
Papers
A Multi-Aspect Framework for Counter Narrative Evaluation using Large Language Models
Jaylen Jones, Lingbo Mo, Eric Fosler-Lussier, Huan Sun
Don't Go To Extremes: Revealing the Excessive Sensitivity and Calibration Limitations of LLMs in Implicit Hate Speech Detection
Min Zhang, Jianfeng He, Taoran Ji, Chang-Tien Lu
Identifying False Content and Hate Speech in Sinhala YouTube Videos by Analyzing the Audio
W. A. K. M. Wickramaarachchi, Sameeri Sathsara Subasinghe, K. K. Rashani Tharushika Wijerathna, A. Sahashra Udani Athukorala, Lakmini Abeywardhana, A. Karunasena
Recent Advances in Hate Speech Moderation: Multimodality and the Role of Large Models
Ming Shan Hee, Shivam Sharma, Rui Cao, Palash Nandi, Preslav Nakov, Tanmoy Chakraborty, Roy Ka-Wei Lee
Analysis and Detection of Multilingual Hate Speech Using Transformer Based Deep Learning
Arijit Das, Somashree Nandy, Rupam Saha, Srijan Das, Diganta Saha
Attentive Fusion: A Transformer-based Approach to Multimodal Hate Speech Detection
Atanu Mandal, Gargi Roy, Amit Barman, Indranil Dutta, Sudip Kumar Naskar