Parser Training with Heterogeneous Treebanks
Abstract
How to make the most of multiple heterogeneous treebanks when training a monolingual dependency parser is an open question. We start by investigating previously suggested, but little evaluated, strategies for exploiting multiple treebanks based on concatenating training sets, with or without fine-tuning. We go on to propose a new method based on treebank embeddings. We perform experiments for several languages and show that in many cases fine-tuning and treebank embeddings lead to substantial improvements over single treebanks or concatenation, with average gains of 2.0--3.5 LAS points. We argue that treebank embeddings should be preferred due to their conceptual simplicity, flexibility and extensibility.
Cite
@article{arxiv.1805.05089,
title = {Parser Training with Heterogeneous Treebanks},
author = {Sara Stymne and Miryam de Lhoneux and Aaron Smith and Joakim Nivre},
journal= {arXiv preprint arXiv:1805.05089},
year = {2018}
}
Comments
7 pages. Accepted to ACL 2018, short papers