„Mann`` is to ``Donna'' as「国王」is to « Reine » Adapting the Analogy Task for Multilingual and Contextual Embeddings

Publication date

2023-07-01

Authors

Mickus, Timothee
Calò, EduardoISNI 0000000512510558
Jacqmin, Léo
Paperno, DenisISNI 000000037085651X
Constant, Mathieu

Editors

Palmer, Alexis
Camacho-collados, Jose

Advisors

Supervisors

Document Type

Part of book
Open Access logo

License

cc_by

Abstract

How does the word analogy task fit in the modern NLP landscape? Given the rarity of comparable multilingual benchmarks and the lack of a consensual evaluation protocol for contextual models, this remains an open question. In this paper, we introduce MATS: a multilingual analogy dataset, covering forty analogical relations in six languages, and evaluate human as well as static and contextual embedding performances on the task. We find that not all analogical relations are equally straightforward for humans, static models remain competitive with contextual embeddings, and optimal settings vary across languages and analogical relations. Several key challenges remain, including creating benchmarks that align with human reasoning and understanding what drives differences across methodologies.

Keywords

Citation

Mickus, T, Calò, E, Jacqmin, L, Paperno, D & Constant, M 2023, „Mann`` is to ``Donna'' as「国王」is to « Reine » Adapting the Analogy Task for Multilingual and Contextual Embeddings. in A Palmer & J Camacho-collados (eds), Proceedings of the 12th Joint Conference on Lexical and Computational Semantics (*SEM 2023). Association for Computational Linguistics, Toronto, Canada, pp. 270-283. https://doi.org/10.18653/v1/2023.starsem-1.25