Optimizing Differentiable Relaxations of Coreference Evaluation Metrics
Abstract
Coreference evaluation metrics are hard to optimize directly as they are non-differentiable functions, not easily decomposable into elementary decisions. Consequently, most approaches optimize objectives only indirectly related to the end goal, resulting in suboptimal performance. Instead, we propose a differentiable relaxation that lends itself to gradient-based optimisation, thus bypassing the need for reinforcement learning or heuristic modification of cross-entropy. We show that by modifying the training objective of a competitive neural coreference system, we obtain a substantial gain in performance. This suggests that our approach can be regarded as a viable alternative to using reinforcement learning or more computationally expensive imitation learning.
Cite
@article{arxiv.1704.04451,
title = {Optimizing Differentiable Relaxations of Coreference Evaluation Metrics},
author = {Phong Le and Ivan Titov},
journal= {arXiv preprint arXiv:1704.04451},
year = {2017}
}
Comments
10 pages. CoNLL