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The Defeat of the Winograd Schema Challenge

2022-01-07 10:22:08
Vid Kocijan, Ernest Davis, Thomas Lukasiewicz, Gary Marcus, Leora Morgenstern

Abstract

The Winograd Schema Challenge -- a set of twin sentences involving pronoun reference disambiguation that seem to require the use of commonsense knowledge -- was proposed by Hector Levesque in 2011. By 2019, a number of AI systems, based on large pre-trained transformer-based language models and fine-tuned on these kinds of problems, achieved better than 90% accuracy. In this paper, we review the history of the Winograd Schema Challenge and assess its significance.

Abstract (translated)

URL

https://arxiv.org/abs/2201.02387

PDF

https://arxiv.org/pdf/2201.02387.pdf


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