TEDB System Description to a Shared Task on Euphemism Detection 2022
Abstract
In this report, we describe our Transformers for euphemism detection baseline (TEDB) submissions to a shared task on euphemism detection 2022. We cast the task of predicting euphemism as text classification. We considered Transformer-based models which are the current state-of-the-art methods for text classification. We explored different training schemes, pretrained models, and model architectures. Our best result of 0.816 F1-score (0.818 precision and 0.814 recall) consists of a euphemism-detection-finetuned TweetEval/TimeLMs-pretrained RoBERTa model as a feature extractor frontend with a KimCNN classifier backend trained end-to-end using a cosine annealing scheduler. We observed pretrained models on sentiment analysis and offensiveness detection to correlate with more F1-score while pretraining on other tasks, such as sarcasm detection, produces less F1-scores. Also, putting more word vector channels does not improve the performance in our experiments.
Cite
@article{arxiv.2301.06602,
title = {TEDB System Description to a Shared Task on Euphemism Detection 2022},
author = {Peratham Wiriyathammabhum},
journal= {arXiv preprint arXiv:2301.06602},
year = {2023}
}
Comments
EMNLP workshop 2022 SharedTask report. FigLang 2022