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5 months ago

Character-level Representations Improve DRS-based Semantic Parsing Even in the Age of BERT

Rik van Noord; Antonio Toral; Johan Bos

Character-level Representations Improve DRS-based Semantic Parsing Even in the Age of BERT

Abstract

We combine character-level and contextual language model representations to improve performance on Discourse Representation Structure parsing. Character representations can easily be added in a sequence-to-sequence model in either one encoder or as a fully separate encoder, with improvements that are robust to different language models, languages and data sets. For English, these improvements are larger than adding individual sources of linguistic information or adding non-contextual embeddings. A new method of analysis based on semantic tags demonstrates that the character-level representations improve performance across a subset of selected semantic phenomena.

Code Repositories

RikVN/Neural_DRS
Official
pytorch
shenminx/drs-parser
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
drs-parsing-on-pmb-2-2-0Bi-LSTM seq2seq: BERT + characters in 1 encoder
F1: 88.3
drs-parsing-on-pmb-3-0-0Bi-LSTM seq2seq: BERT + characters in 1 encoder
F1: 89.3

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Character-level Representations Improve DRS-based Semantic Parsing Even in the Age of BERT | Papers | HyperAI