Combination Strategies for Semantic Role Labeling
Abstract
This paper introduces and analyzes a battery of inference models for the problem of semantic role labeling: one based on constraint satisfaction, and several strategies that model the inference as a meta-learning problem using discriminative classifiers. These classifiers are developed with a rich set of novel features that encode proposition and sentence-level information. To our knowledge, this is the first work that: (a) performs a thorough analysis of learning-based inference models for semantic role labeling, and (b) compares several inference strategies in this context. We evaluate the proposed inference strategies in the framework of the CoNLL-2005 shared task using only automatically-generated syntactic information. The extensive experimental evaluation and analysis indicates that all the proposed inference strategies are successful - they all outperform the current best results reported in the CoNLL-2005 evaluation exercise - but each of the proposed approaches has its advantages and disadvantages. Several important traits of a state-of-the-art SRL combination strategy emerge from this analysis: (i) individual models should be combined at the granularity of candidate arguments rather than at the granularity of complete solutions; (ii) the best combination strategy uses an inference model based in learning; and (iii) the learning-based inference benefits from max-margin classifiers and global feedback.
Cite
Text
Surdeanu et al. "Combination Strategies for Semantic Role Labeling." Journal of Artificial Intelligence Research, 2007. doi:10.1613/JAIR.2088Markdown
[Surdeanu et al. "Combination Strategies for Semantic Role Labeling." Journal of Artificial Intelligence Research, 2007.](https://mlanthology.org/jair/2007/surdeanu2007jair-combination/) doi:10.1613/JAIR.2088BibTeX
@article{surdeanu2007jair-combination,
title = {{Combination Strategies for Semantic Role Labeling}},
author = {Surdeanu, Mihai and Màrquez, Lluís and Carreras, Xavier and Comas, Pere},
journal = {Journal of Artificial Intelligence Research},
year = {2007},
pages = {105-151},
doi = {10.1613/JAIR.2088},
volume = {29},
url = {https://mlanthology.org/jair/2007/surdeanu2007jair-combination/}
}