Large Discourse Treebanks from Scalable Distant Supervision
Computation and Language
2022-12-13 v1
Abstract
Discourse parsing is an essential upstream task in Natural Language Processing with strong implications for many real-world applications. Despite its widely recognized role, most recent discourse parsers (and consequently downstream tasks) still rely on small-scale human-annotated discourse treebanks, trying to infer general-purpose discourse structures from very limited data in a few narrow domains. To overcome this dire situation and allow discourse parsers to be trained on larger, more diverse and domain-independent datasets, we propose a framework to generate "silver-standard" discourse trees from distant supervision on the auxiliary task of sentiment analysis.
Cite
@article{arxiv.2212.06038,
title = {Large Discourse Treebanks from Scalable Distant Supervision},
author = {Patrick Huber and Giuseppe Carenini},
journal= {arXiv preprint arXiv:2212.06038},
year = {2022}
}
Comments
Extended Abstract. Non Archival. 2 pages