Please Mind the Root: Decoding Arborescences for Dependency Parsing
Abstract
The connection between dependency trees and spanning trees is exploited by the NLP community to train and to decode graph-based dependency parsers. However, the NLP literature has missed an important difference between the two structures: only one edge may emanate from the root in a dependency tree. We analyzed the output of state-of-the-art parsers on many languages from the Universal Dependency Treebank: although these parsers are often able to learn that trees which violate the constraint should be assigned lower probabilities, their ability to do so unsurprisingly de-grades as the size of the training set decreases. In fact, the worst constraint-violation rate we observe is 24%. Prior work has proposed an inefficient algorithm to enforce the constraint, which adds a factor of n to the decoding runtime. We adapt an algorithm due to Gabow and Tarjan (1984) to dependency parsing, which satisfies the constraint without compromising the original runtime.
Keywords
Cite
@article{arxiv.2010.02550,
title = {Please Mind the Root: Decoding Arborescences for Dependency Parsing},
author = {Ran Zmigrod and Tim Vieira and Ryan Cotterell},
journal= {arXiv preprint arXiv:2010.02550},
year = {2020}
}