Journal of Natural Language Processing
Online ISSN : 2185-8314
Print ISSN : 1340-7619
ISSN-L : 1340-7619
General Paper (Peer-Reviewed)
Enhancing Semantic Correlation between Instances and Relations for Zero-Shot Relation Extraction
Van-Hien TranHiroki OuchiHiroyuki ShindoYuji MatsumotoTaro Watanabe
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JOURNAL FREE ACCESS

2023 Volume 30 Issue 2 Pages 304-329

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Abstract

Zero-shot relation extraction aims to recognize (new) unseen relations that cannot be observed during training. Due to this point, recognizing unseen relations with no corresponding labeled training instances is a challenging task. Recognizing an unseen relation between two entities in an input instance at the testing time, a model needs to grasp the semantic relationship between the instance and all unseen relations to make a prediction. This study argues that enhancing the semantic correlation between instances and relations is key to effectively solving the zero-shot relation extraction task. A new model entirely devoted to this goal through three main aspects was proposed: learning effective relation representation, designing purposeful mini-batches, and binding two-way semantic consistency. Experimental results on two benchmark datasets demonstrate that our approach significantly improves task performance and achieves state-of-the-art results. Our source code and data are publicly available.

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© 2023 The Association for Natural Language Processing
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