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Papers/Core Semantic First: A Top-down Approach for AMR Parsing

Core Semantic First: A Top-down Approach for AMR Parsing

Deng Cai, Wai Lam

2019-09-10IJCNLP 2019 11AMR Parsing
PaperPDFCode(official)

Abstract

We introduce a novel scheme for parsing a piece of text into its Abstract Meaning Representation (AMR): Graph Spanning based Parsing (GSP). One novel characteristic of GSP is that it constructs a parse graph incrementally in a top-down fashion. Starting from the root, at each step, a new node and its connections to existing nodes will be jointly predicted. The output graph spans the nodes by the distance to the root, following the intuition of first grasping the main ideas then digging into more details. The \textit{core semantic first} principle emphasizes capturing the main ideas of a sentence, which is of great interest. We evaluate our model on the latest AMR sembank and achieve the state-of-the-art performance in the sense that no heuristic graph re-categorization is adopted. More importantly, the experiments show that our parser is especially good at obtaining the core semantics.

Results

TaskDatasetMetricValueModel
Semantic ParsingLDC2017T10Smatch73.2Cai and Lam
AMR ParsingLDC2017T10Smatch73.2Cai and Lam

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