A Multi-Task and Multi-Label Classification Model for Implicit Discourse Relation Recognition
Abstract
We propose a novel multi-label classification approach to implicit discourse relation recognition (IDRR). Our approach features a multi-task model that jointly learns multi-label representations of implicit discourse relations across all three sense levels in the PDTB 3.0 framework. The model can also be adapted to the traditional single-label IDRR setting by selecting the sense with the highest probability in the multi-label representation. We conduct extensive experiments to identify optimal model configurations and loss functions in both settings. Our approach establishes the first benchmark for multi-label IDRR and achieves SOTA results on single-label IDRR using DiscoGeM. Finally, we evaluate our model on the PDTB 3.0 corpus in the single-label setting, presenting the first analysis of transfer learning between the DiscoGeM and PDTB 3.0 corpora for IDRR.
Cite
@article{arxiv.2408.08971,
title = {A Multi-Task and Multi-Label Classification Model for Implicit Discourse Relation Recognition},
author = {Nelson Filipe Costa and Leila Kosseim},
journal= {arXiv preprint arXiv:2408.08971},
year = {2025}
}
Comments
Accepted at SIGDIAL 2025