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arxiv: 1811.05889 · v1 · pith:2SW2SYSRnew · submitted 2018-11-14 · 💻 cs.CL

Dependency Grammar Induction with a Neural Variational Transition-based Parser

classification 💻 cs.CL
keywords dependencyinferencemodelstransition-basedgrammargraph-basedinductionneural
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Dependency grammar induction is the task of learning dependency syntax without annotated training data. Traditional graph-based models with global inference achieve state-of-the-art results on this task but they require $O(n^3)$ run time. Transition-based models enable faster inference with $O(n)$ time complexity, but their performance still lags behind. In this work, we propose a neural transition-based parser for dependency grammar induction, whose inference procedure utilizes rich neural features with $O(n)$ time complexity. We train the parser with an integration of variational inference, posterior regularization and variance reduction techniques. The resulting framework outperforms previous unsupervised transition-based dependency parsers and achieves performance comparable to graph-based models, both on the English Penn Treebank and on the Universal Dependency Treebank. In an empirical comparison, we show that our approach substantially increases parsing speed over graph-based models.

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