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Metaphors in Pre-Trained Language Models: Probing and Generalization Across Datasets and Languages

Contextual representations in large pre-trained language models encode metaphorical knowledge, particularly in middle layers, and this knowledge is transferable across languages and datasets when annotations are consistent.

Year
2022
Venue
ACL 2022 5
Authors
3
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arxiv.org/abs/2203.14139ARXIV-DEFAULT
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Abstract

Human languages are full of metaphorical expressions. Metaphors help people understand the world by connecting new concepts and domains to more familiar ones. Large pre-trained language models (PLMs) are therefore assumed to encode metaphorical knowledge useful for NLP systems. In this paper, we investigate this hypothesis for PLMs, by probing metaphoricity information in their encodings, and by measuring the cross-lingual and cross-dataset generalization of this information. We present studies in multiple metaphor detection datasets and in four languages (i.e., English, Spanish, Russian, and Farsi). Our extensive experiments suggest that contextual representations in PLMs do encode metaphorical knowledge, and mostly in their middle layers. The knowledge is transferable between languages and datasets, especially when the annotation is consistent across training and testing sets. Our findings give helpful insights for both cognitive and NLP scientists.

Authors

3