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3 months ago

HIT-SCIR at MRP 2019: A Unified Pipeline for Meaning Representation Parsing via Efficient Training and Effective Encoding

{Longxu Dou Wanxiang Che Yuxuan Wang Yang Xu Ting Liu Yijia Liu}

HIT-SCIR at MRP 2019: A Unified Pipeline for Meaning Representation Parsing via Efficient Training and Effective Encoding

Abstract

This paper describes our system (HIT-SCIR) for CoNLL 2019 shared task: Cross-Framework Meaning Representation Parsing. We extended the basic transition-based parser with two improvements: a) Efficient Training by realizing Stack LSTM parallel training; b) Effective Encoding via adopting deep contextualized word embeddings BERT. Generally, we proposed a unified pipeline to meaning representation parsing, including framework-specific transition-based parsers, BERT-enhanced word representation, and post-processing. In the final evaluation, our system was ranked first according to ALL-F1 (86.2{%}) and especially ranked first in UCCA framework (81.67{%}).

Benchmarks

BenchmarkMethodologyMetrics
ucca-parsing-on-conll-2019Transition-based (+BERT + Efficient Training + Effective Encoding)
Full MRP F1: 81.7
Full UCCA F1: 66.7
LPP MRP F1: 82.6
LPP UCCA F1: 64.4

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HIT-SCIR at MRP 2019: A Unified Pipeline for Meaning Representation Parsing via Efficient Training and Effective Encoding | Papers | HyperAI