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4 months ago

Coarse-to-Fine Decoding for Neural Semantic Parsing

Li Dong; Mirella Lapata

Coarse-to-Fine Decoding for Neural Semantic Parsing

Abstract

Semantic parsing aims at mapping natural language utterances into structured meaning representations. In this work, we propose a structure-aware neural architecture which decomposes the semantic parsing process into two stages. Given an input utterance, we first generate a rough sketch of its meaning, where low-level information (such as variable names and arguments) is glossed over. Then, we fill in missing details by taking into account the natural language input and the sketch itself. Experimental results on four datasets characteristic of different domains and meaning representations show that our approach consistently improves performance, achieving competitive results despite the use of relatively simple decoders.

Code Repositories

donglixp/coarse2fine
Official
pytorch
inyukwo1/Coarse2fine_boilerplate
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
semantic-parsing-on-geocoarse2fine
Accuracy: 88.2

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