Zero-shot relation extraction via reading comprehension

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Abstract

We show that relation extraction can be reduced to answering simple reading comprehension questions, by associating one or more natural-language questions with each relation slot. This reduction has several advantages: we can (1) learn relation-extraction models by extending recent neural reading-comprehension techniques, (2) build very large training sets for those models by combining relation-specific crowd-sourced questions with distant supervision, and even (3) do zero-shot learning by extracting new relation types that are only specified at test-time, for which we have no labeled training examples. Experiments on a Wikipedia slot-filling task demonstrate that the approach can generalize to new questions for known relation types with high accuracy, and that zero-shot generalization to unseen relation types is possible, at lower accuracy levels, setting the bar for future work on this task.

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APA

Levy, O., Seo, M., Choi, E., & Zettlemoyer, L. (2017). Zero-shot relation extraction via reading comprehension. In CoNLL 2017 - 21st Conference on Computational Natural Language Learning, Proceedings (pp. 333–342). Association for Computational Linguistics (ACL). https://doi.org/10.18653/v1/k17-1034

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