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Revisiting Tri-training of Dependency Parsers

2021-09-16 17:19:05
Joachim Wagner, Jennifer Foster

Abstract

We compare two orthogonal semi-supervised learning techniques, namely tri-training and pretrained word embeddings, in the task of dependency parsing. We explore language-specific FastText and ELMo embeddings and multilingual BERT embeddings. We focus on a low resource scenario as semi-supervised learning can be expected to have the most impact here. Based on treebank size and available ELMo models, we select Hungarian, Uyghur (a zero-shot language for mBERT) and Vietnamese. Furthermore, we include English in a simulated low-resource setting. We find that pretrained word embeddings make more effective use of unlabelled data than tri-training but that the two approaches can be successfully combined.

Abstract (translated)

URL

https://arxiv.org/abs/2109.08122

PDF

https://arxiv.org/pdf/2109.08122.pdf


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