Ensembling strategies for Transformer-based Offensive language Detection

EACL-2021 Logo

Abstract

Social media often acts as breeding grounds for different forms of offensive content. For low resource languages like Tamil, the situation is more complex due to the poor performance of multilingual or language-specific models and lack of proper benchmark datasets. Based on this shared task, Offensive Language Identification in Dravidian Languages at EACL 2021, we present an exhaustive exploration of different transformer models, We also provide a genetic algorithm technique for ensembling different models. Our ensembled models trained separately for each language secured the first position in Tamil, the second position in Kannada, and the first position in Malayalam sub-tasks. The models and codes are provided.

Publication
In the First Workshop on Speech and Language Technologies for Dravidian Languages, EACL 2021
Debjoy Saha
Debjoy Saha
B.Tech Student

B.tech stduent interested in Multimodal Machine Learning and Speech, Language and Image Processing