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Ofir Arviv Ruixiang Cui Daniel Hershcovich

Abstract
This paper describes the HUJI-KU system submission to the shared task on Cross-Framework Meaning Representation Parsing (MRP) at the 2020 Conference for Computational Language Learning (CoNLL), employing TUPA and the HIT-SCIR parser, which were, respectively, the baseline system and winning system in the 2019 MRP shared task. Both are transition-based parsers using BERT contextualized embeddings. We generalized TUPA to support the newly-added MRP frameworks and languages, and experimented with multitask learning with the HIT-SCIR parser. We reached 4th place in both the cross-framework and cross-lingual tracks.
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| semantic-parsing-on-amr-chinese-mrp-2020 | HUJI-KU | F1: 45 |
| semantic-parsing-on-amr-english-mrp-2020 | HUJI-KU | F1: 52 |
| semantic-parsing-on-drg-english-mrp-2020 | HUJI-KU | F1: 63 |
| semantic-parsing-on-drg-german-mrp-2020 | HUJI-KU | F1: 62 |
| semantic-parsing-on-eds-english-mrp-2020 | HUJI-KU | F1: 80 |
| semantic-parsing-on-ptg-czech-mrp-2020 | HUJI-KU | F1: 58 |
| semantic-parsing-on-ptg-english-mrp-2020 | HUJI-KU | F1: 54 |
| semantic-parsing-on-ucca-english-mrp-2020 | HUJI-KU | F1: 73 |
| semantic-parsing-on-ucca-german-mrp-2020 | HUJI-KU | F1: 75 |
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