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AMR Parsing as Graph Prediction with Latent Alignment

2018-05-14ACL 2018Code Available0· sign in to hype

Chunchuan Lyu, Ivan Titov

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Abstract

Abstract meaning representations (AMRs) are broad-coverage sentence-level semantic representations. AMRs represent sentences as rooted labeled directed acyclic graphs. AMR parsing is challenging partly due to the lack of annotated alignments between nodes in the graphs and words in the corresponding sentences. We introduce a neural parser which treats alignments as latent variables within a joint probabilistic model of concepts, relations and alignments. As exact inference requires marginalizing over alignments and is infeasible, we use the variational auto-encoding framework and a continuous relaxation of the discrete alignments. We show that joint modeling is preferable to using a pipeline of align and parse. The parser achieves the best reported results on the standard benchmark (74.4% on LDC2016E25).

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Benchmark Results

DatasetModelMetricClaimedVerifiedStatus
LDC2015E86Joint modelSmatch73.7Unverified
LDC2017T10Joint modelSmatch74.4Unverified

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