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Deep Contextualized Self-training for Low Resource Dependency Parsing

Abstract

Neural dependency parsing has proven very effective, achieving state-of-the-art results on numerous domains and languages. Unfortunately, it requires large amounts of labeled data, that is costly and laborious to create. In this paper we propose a self-training algorithm that alleviates this annotation bottleneck by training a parser on its own output. Our Deep Contextualized Self-training (DCST) algorithm utilizes representation models trained on sequence labeling tasks that are derived from the parser’s output when applied to unlabeled data and integrates these models with the base parser through a gating mechanism. We conduct experiments across multiple languages, both in low resource in-domain and in cross-domain setups and demonstrate that DCST substantially outperforms traditional self-training as well as recent semi-supervised training methods.

(presented at ACL 2020) Article at MIT Press

Author Biography

Roi Reichart

Assistant Professor, Faculty of Industrial Engineering and Management, The Technion, Israel Institute of Technology.