Abstract
Adaptor grammars extend probabilistic context-free grammars to define prior distributions over trees with ``rich get richer'' dynamics. Inference for adaptor grammars seeks to find parse trees for raw text. This paper describes a variational inference algorithm for adaptor grammars, providing an alternative to Markov chain Monte Carlo methods. To derive this method, we develop a stick-breaking representation of adaptor grammars, a representation that enables us to define adaptor grammars with recursion. We report experimental results on a word segmentation task, showing that variational inference performs comparably to MCMC. Further, we show a significant speed-up when parallelizing the algorithm. Finally, we report promising results for a new application for adaptor grammars, dependency grammar induction.
| Original language | English |
|---|---|
| Title of host publication | Proceedings of ACL |
| Pages | 564-572 |
| Number of pages | 9 |
| Publication status | Published - 2010 |
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