AMR Dependency Parsing with a Typed Semantic Algebra
About
We present a semantic parser for Abstract Meaning Representations which learns to parse strings into tree representations of the compositional structure of an AMR graph. This allows us to use standard neural techniques for supertagging and dependency tree parsing, constrained by a linguistically principled type system. We present two approximative decoding algorithms, which achieve state-of-the-art accuracy and outperform strong baselines.
Jonas Groschwitz, Matthias Lindemann, Meaghan Fowlie, Mark Johnson, Alexander Koller• 2018
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| AMR parsing | LDC2017T10 AMR 2.0 (test) | Smatch71 | 168 | |
| AMR parsing | LDC2017T10 (test) | Smatch (ordinary)71 | 6 |
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