Multilingual AMR Parsing with Noisy Knowledge Distillation
Cai, Deng, Li, Xin, Ho, Jackie Chun-Sing, Bing, Lidong, Lam, Wai
–arXiv.org Artificial Intelligence
We study multilingual AMR parsing from the perspective of knowledge distillation, where the aim is to learn and improve a multilingual AMR parser by using an existing English parser as its teacher. We constrain our exploration in a strict multilingual setting: there is but one model to parse all different languages including English. We identify that noisy input and precise output are the key to successful distillation. Together with extensive pre-training, we obtain an AMR parser whose performances surpass all previously published results on four different foreign languages, including German, Spanish, Italian, and Chinese, by large margins (up to 18.8 \textsc{Smatch} points on Chinese and on average 11.3 \textsc{Smatch} points). Our parser also achieves comparable performance on English to the latest state-of-the-art English-only parser.
arXiv.org Artificial Intelligence
Oct-13-2021
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