ReFRAME or Remain: Unsupervised Lexical Semantic Change Detection with Frame Semantics
About
The majority of contemporary computational methods for lexical semantic change (LSC) detection are based on neural embedding distributional representations. Although these models perform well on LSC benchmarks, their results are often difficult to interpret. We explore an alternative approach that relies solely on frame semantics. We show that this method is effective for detecting semantic change and can even outperform many distributional semantic models. Finally, we present a detailed quantitative and qualitative analysis of its predictions, demonstrating that they are both plausible and highly interpretable
Bach Phan-Tat, Kris Heylen, Dirk Geeraerts, Stefano De Pascale, Dirk Speelman• 2026
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Lexical Semantic Change Detection | SemEval Task 1 Subtask 2 English 2020 | Spearman Correlation0.306 | 54 | |
| Binary Lexical Semantic Change Detection | SemEval Subtask 1 (English) 2020 | Accuracy0.622 | 28 |
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