DocAMR: Multi-Sentence AMR Representation and Evaluation (2112.08513v2)
Abstract: Despite extensive research on parsing of English sentences into Abstraction Meaning Representation (AMR) graphs, which are compared to gold graphs via the Smatch metric, full-document parsing into a unified graph representation lacks well-defined representation and evaluation. Taking advantage of a super-sentential level of coreference annotation from previous work, we introduce a simple algorithm for deriving a unified graph representation, avoiding the pitfalls of information loss from over-merging and lack of coherence from under-merging. Next, we describe improvements to the Smatch metric to make it tractable for comparing document-level graphs, and use it to re-evaluate the best published document-level AMR parser. We also present a pipeline approach combining the top performing AMR parser and coreference resolution systems, providing a strong baseline for future research.
- Tahira Naseem (27 papers)
- Austin Blodgett (10 papers)
- Sadhana Kumaravel (9 papers)
- Tim O'Gorman (9 papers)
- Young-Suk Lee (17 papers)
- Jeffrey Flanigan (18 papers)
- Ramón Fernandez Astudillo (29 papers)
- Radu Florian (54 papers)
- Salim Roukos (41 papers)
- Nathan Schneider (50 papers)