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Unsupervised Pronoun Resolution via Masked Noun-Phrase Prediction

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In this work, we propose Masked Noun-Phrase Prediction (MNPP), a pre-training strategy to tackle pronoun resolution in a fully unsupervised setting. Firstly, We evaluate our pre-trained model on various pronoun resolution datasets without any finetuning. Our method outperforms all previous unsupervised methods on all datasets by large margins. Secondly, we proceed to a few-shot setting where we finetune our pre-trained model on WinoGrande-S and XS separately. Our method outperforms RoBERTa-large baseline with large margins, meanwhile, achieving a higher AUC score after further finetuning on the remaining three official splits of WinoGrande.

Ming Shen, Pratyay Banerjee, Chitta Baral• 2021

Related benchmarks

TaskDatasetResultRank
Common Sense ReasoningCOPA
Accuracy85.5
138
Coreference ResolutionGAP (test)
Overall F173.3
53
Pronoun ResolutionWinoGrande
Accuracy59.2
35
Pronoun DisambiguationWinograd Schema Challenge
Accuracy79.5
27
Pronoun ResolutionDPR
Accuracy0.839
14
Pronoun ResolutionKnowRef
Accuracy80
8
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