State-of-the-art approaches for metaphor detection compare their literal - or core - meaning and their contextual meaning using metaphor classifiers based on neural networks. However, metaphorical expressions evolve over time due to various reasons, such as cultural and societal impact. Metaphorical expressions are known to co-evolve with language and literal word meanings, and even drive, to some extent, this evolution. This poses the question of whether different, possibly time-specific, representations of literal meanings may impact the metaphor detection task. To the best of our knowledge, this is the first study that examines the metaphor detection task with a detailed exploratory analysis where different temporal and static word embeddings are used to account for different representations of literal meanings. Our experimental analysis is based on three popular benchmarks used for metaphor detection and word embeddings extracted from different corpora and temporally aligned using ...

Ottolina, G., Palmonari, M., Vimercati, M., Alam, M. (2022). On the Impact of Temporal Representations on Metaphor Detection. In LREC 2022 Conference Proceedings (pp.623-632). European Language Resources Association (ELRA).

On the Impact of Temporal Representations on Metaphor Detection

Ottolina, G
;
Palmonari, M;Vimercati, M;
2022

Abstract

State-of-the-art approaches for metaphor detection compare their literal - or core - meaning and their contextual meaning using metaphor classifiers based on neural networks. However, metaphorical expressions evolve over time due to various reasons, such as cultural and societal impact. Metaphorical expressions are known to co-evolve with language and literal word meanings, and even drive, to some extent, this evolution. This poses the question of whether different, possibly time-specific, representations of literal meanings may impact the metaphor detection task. To the best of our knowledge, this is the first study that examines the metaphor detection task with a detailed exploratory analysis where different temporal and static word embeddings are used to account for different representations of literal meanings. Our experimental analysis is based on three popular benchmarks used for metaphor detection and word embeddings extracted from different corpora and temporally aligned using ...
paper
Metaphor Detection; Static Word Embeddings; Temporal Word Embeddings;
Methaphor Detection, Word Embedding, SWEAT
English
13th Edition of its Language Resources and Evaluation Conference
2022
Calzolari, N; Béchet, F; Blache, P; Choukri, K; Cieri, C; Declerck, T; Goggi, S; Isahara, H; Maegaard, B; Mariani, J; Mazo, H; Odijk, J; Piperidis, S
LREC 2022 Conference Proceedings
9791095546726
2022
623
632
open
Ottolina, G., Palmonari, M., Vimercati, M., Alam, M. (2022). On the Impact of Temporal Representations on Metaphor Detection. In LREC 2022 Conference Proceedings (pp.623-632). European Language Resources Association (ELRA).
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/402476
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