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4 months ago

An Incremental Parser for Abstract Meaning Representation

Marco Damonte; Shay B. Cohen; Giorgio Satta

An Incremental Parser for Abstract Meaning Representation

Abstract

Meaning Representation (AMR) is a semantic representation for natural language that embeds annotations related to traditional tasks such as named entity recognition, semantic role labeling, word sense disambiguation and co-reference resolution. We describe a transition-based parser for AMR that parses sentences left-to-right, in linear time. We further propose a test-suite that assesses specific subtasks that are helpful in comparing AMR parsers, and show that our parser is competitive with the state of the art on the LDC2015E86 dataset and that it outperforms state-of-the-art parsers for recovering named entities and handling polarity.

Code Repositories

mdtux89/amr-evaluation
Official
Mentioned in GitHub
mdtux89/amr-eager-multilingual
pytorch
Mentioned in GitHub
mdtux89/amr-eager
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
amr-parsing-on-ldc2015e86-1AMREager
Smatch: 64.0

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An Incremental Parser for Abstract Meaning Representation | Papers | HyperAI