A Structured Learning Approach to Temporal Relation Extraction
Abstract
Identifying temporal relations between events is an essential step towards natural language understanding. However, the temporal relation between two events in a story depends on, and is often dictated by, relations among other events. Consequently, effectively identifying temporal relations between events is a challenging problem even for human annotators. This paper suggests that it is important to take these dependencies into account while learning to identify these relations and proposes a structured learning approach to address this challenge. As a byproduct, this provides a new perspective on handling missing relations, a known issue that hurts existing methods. As we show, the proposed approach results in significant improvements on the two commonly used data sets for this problem.
Cite
@article{arxiv.1906.04943,
title = {A Structured Learning Approach to Temporal Relation Extraction},
author = {Qiang Ning and Zhili Feng and Dan Roth},
journal= {arXiv preprint arXiv:1906.04943},
year = {2019}
}
Comments
Long paper appeared in EMNLP'17. 11 pages and 4 figures