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Self-Training for Unsupervised Parsing with PRPN

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arxiv 2005.13455 v1 pith:UVPKZ3MA submitted 2020-05-27 cs.CL

Self-Training for Unsupervised Parsing with PRPN

classification cs.CL
keywords modelneuralparsingprpnannotationsarchitecturecopiesmodels
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Neural unsupervised parsing (UP) models learn to parse without access to syntactic annotations, while being optimized for another task like language modeling. In this work, we propose self-training for neural UP models: we leverage aggregated annotations predicted by copies of our model as supervision for future copies. To be able to use our model's predictions during training, we extend a recent neural UP architecture, the PRPN (Shen et al., 2018a) such that it can be trained in a semi-supervised fashion. We then add examples with parses predicted by our model to our unlabeled UP training data. Our self-trained model outperforms the PRPN by 8.1% F1 and the previous state of the art by 1.6% F1. In addition, we show that our architecture can also be helpful for semi-supervised parsing in ultra-low-resource settings.

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