Transformer models with class weighting and threshold tuning achieve competitive F1 scores on three subtasks of multilingual polarization detection.
Predicting the Type and Target of Offensive Posts in Social Media
1 Pith paper cite this work. Polarity classification is still indexing.
abstract
As offensive content has become pervasive in social media, there has been much research in identifying potentially offensive messages. However, previous work on this topic did not consider the problem as a whole, but rather focused on detecting very specific types of offensive content, e.g., hate speech, cyberbulling, or cyber-aggression. In contrast, here we target several different kinds of offensive content. In particular, we model the task hierarchically, identifying the type and the target of offensive messages in social media. For this purpose, we complied the Offensive Language Identification Dataset (OLID), a new dataset with tweets annotated for offensive content using a fine-grained three-layer annotation scheme, which we make publicly available. We discuss the main similarities and differences between OLID and pre-existing datasets for hate speech identification, aggression detection, and similar tasks. We further experiment with and we compare the performance of different machine learning models on OLID.
fields
cs.CL 1years
2026 1verdicts
UNVERDICTED 1representative citing papers
citing papers explorer
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Multilingual Polarization Detection Using Transformer-Based Models with Class Weighting and Threshold Tuning
Transformer models with class weighting and threshold tuning achieve competitive F1 scores on three subtasks of multilingual polarization detection.