Exploring Unsupervised Pretraining and Sentence Structure Modelling for Winograd Schema Challenge
Abstract
Winograd Schema Challenge (WSC) was proposed as an AI-hard problem in testing computers' intelligence on common sense representation and reasoning. This paper presents the new state-of-theart on WSC, achieving an accuracy of 71.1%. We demonstrate that the leading performance benefits from jointly modelling sentence structures, utilizing knowledge learned from cutting-edge pretraining models, and performing fine-tuning. We conduct detailed analyses, showing that fine-tuning is critical for achieving the performance, but it helps more on the simpler associative problems. Modelling sentence dependency structures, however, consistently helps on the harder non-associative subset of WSC. Analysis also shows that larger fine-tuning datasets yield better performances, suggesting the potential benefit of future work on annotating more Winograd schema sentences.
Cite
@article{arxiv.1904.09705,
title = {Exploring Unsupervised Pretraining and Sentence Structure Modelling for Winograd Schema Challenge},
author = {Yu-Ping Ruan and Xiaodan Zhu and Zhen-Hua Ling and Zhan Shi and Quan Liu and Si Wei},
journal= {arXiv preprint arXiv:1904.09705},
year = {2019}
}
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7 pages