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MelBERT: Metaphor Detection via Contextualized Late Interaction using Metaphorical Identification Theories

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Automated metaphor detection is a challenging task to identify metaphorical expressions of words in a sentence. To tackle this problem, we adopt pre-trained contextualized models, e.g., BERT and RoBERTa. To this end, we propose a novel metaphor detection model, namely metaphor-aware late interaction over BERT (MelBERT). Our model not only leverages contextualized word representation but also benefits from linguistic metaphor identification theories to distinguish between the contextual and literal meaning of words. Our empirical results demonstrate that MelBERT outperforms several strong baselines on four benchmark datasets, i.e., VUA-18, VUA-20, MOH-X, and TroFi.

Minjin Choi, Sunkyung Lee, Eunseong Choi, Heesoo Park, Junhyuk Lee, Dongwon Lee, Jongwuk Lee• 2021

Related benchmarks

TaskDatasetResultRank
Metaphor DetectionMOH-X
F1 Score80.6
15
Metaphor DetectionTroFi
F1 Score63.1
15
Metaphor PredictionVUA 18
Accuracy93.8
6
Metaphor PredictionVUA-18 (test)
Binary F178.2
6
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