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Representation Learning and Dynamic Programming for Arc-Hybrid Parsing

2019-11-01CONLL 2019Unverified0· sign in to hype

Joseph Le Roux, Antoine Rozenknop, Mathieu Lacroix

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Abstract

We present a new method for transition-based parsing where a solution is a pair made of a dependency tree and a derivation graph describing the construction of the former. From this representation we are able to derive an efficient parsing algorithm and design a neural network that learns vertex representations and arc scores. Experimentally, although we only train via local classifiers, our approach improves over previous arc-hybrid systems and reach state-of-the-art parsing accuracy.

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