CLJul 11, 2017

A non-projective greedy dependency parser with bidirectional LSTMs

arXiv:1707.03228v11089 citationsHas Code
Originality Incremental advance
AI Analysis

This work addresses dependency parsing for multiple languages, but it is incremental as it adapts existing methods to a specific algorithm.

The paper tackles non-projective dependency parsing by implementing a neural version of the Covington algorithm with bidirectional LSTMs and a dynamic oracle, achieving 7th place in macro-average LAS and UAS for big treebanks among 33 teams in the CoNLL 2017 UD Shared Task.

The LyS-FASTPARSE team presents BIST-COVINGTON, a neural implementation of the Covington (2001) algorithm for non-projective dependency parsing. The bidirectional LSTM approach by Kipperwasser and Goldberg (2016) is used to train a greedy parser with a dynamic oracle to mitigate error propagation. The model participated in the CoNLL 2017 UD Shared Task. In spite of not using any ensemble methods and using the baseline segmentation and PoS tagging, the parser obtained good results on both macro-average LAS and UAS in the big treebanks category (55 languages), ranking 7th out of 33 teams. In the all treebanks category (LAS and UAS) we ranked 16th and 12th. The gap between the all and big categories is mainly due to the poor performance on four parallel PUD treebanks, suggesting that some `suffixed' treebanks (e.g. Spanish-AnCora) perform poorly on cross-treebank settings, which does not occur with the corresponding `unsuffixed' treebank (e.g. Spanish). By changing that, we obtain the 11th best LAS among all runs (official and unofficial). The code is made available at https://github.com/CoNLL-UD-2017/LyS-FASTPARSE

Code Implementations1 repo
Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes