Author:
Periti Francesco,Picascia Sergio,Montanelli Stefano,Ferrara Alfio,Tahmasebi Nina
Abstract
AbstractThe study of semantic shift, that is, of how words change meaning as a consequence of social practices, events and political circumstances, is relevant in Natural Language Processing, Linguistics, and Social Sciences. The increasing availability of large diachronic corpora and advance in computational semantics have accelerated the development of computational approaches to detecting such shift. In this paper, we introduce a novel approach to tracing the evolution of word meaning over time. Our analysis focuses on gradual changes in word semantics and relies on an incremental approach to semantic shift detection (SSD) called What is Done is Done (WiDiD). WiDiD leverages scalable and evolutionary clustering of contextualised word embeddings to detect semantic shift and capture temporal transactions in word meanings. Existing approaches to SSD: (a) significantly simplify the semantic shift problem to cover change between two (or a few) time points, and (b) consider the existing corpora as static. We instead treat SSD as an organic process in which word meanings evolve across tens or even hundreds of time periods as the corpus is progressively made available. This results in an extremely demanding task that entails a multitude of intricate decisions. We demonstrate the applicability of this incremental approach on a diachronic corpus of Italian parliamentary speeches spanning eighteen distinct time periods. We also evaluate its performance on seven popular labelled benchmarks for SSD across multiple languages. Empirical results show that our results are comparable to state-of-the-art approaches, while outperforming the state-of-the-art for certain languages.
Funder
Vetenskapsrådet
Riksbankens Jubileumsfond
Università degli Studi di Milano
Publisher
Springer Science and Business Media LLC
Reference53 articles.
1. Aida, T., Bollegala, D.: A Semantic Distance Metric Learning approach for Lexical Semantic Change Detection. In: Ku, L.-W., Martins, A., Srikumar, V. (eds.) Findings of the Association for Computational Linguistics ACL 2024, pp. 7570–7584. Association for Computational Linguistics, Bangkok, Thailand and virtual meeting (2024). https://aclanthology.org/2024.findings-acl.451
2. Alkhalifa, R., Kochkina, E., & Zubiaga, A. (2023). Building for tomorrow: Assessing the temporal persistence of text classifiers. Information Processing & Management, 60(2), 103200. https://doi.org/10.1016/j.ipm.2022.103200
3. Azarbonyad, H., Dehghani, M., Beelen, K., Arkut, A., Marx, M., & Kamps, J. (2017). Words are malleable: Computing semantic shifts in political and media discourse. In Proceedings of the 2017 ACM on conference on information and knowledge management (CIKM ’17) (pp. 1509–1518). Association for Computing Machinery. https://doi.org/10.1145/3132847.3132878
4. Basile, P., Caputo, A., Caselli, T., Cassotti, P., & Varvara, R. (2020). DIACR-Ita@ EVALITA2020: Overview of the EVALITA2020 DiachronicLexical semantics (DIACR-Ita) task. In Proceedings of the evaluation campaign of natural language processing and speech tools for Italian (EVALITA). CEUR-WS.org. https://ceur-ws.org/Vol-2765/paper158.pdf
5. Basile, P., Caputo, A., Luisi, R., & Semeraro, G. (2016). Diachronic analysis of the Italian language exploiting Google Ngram. In A. Corazza, S. Montemagni, & G. Semeraro (Eds.), Proceedings of the third Italian conference on computational linguistics CLiC-It 2016. Accademia University Press. Digital reference of the book. https://doi.org/10.4000/books.aaccademia.1707