Transparent Semantic Change Detection with Dependency-Based Profiles
Computation and Language
2026-05-05 v3
Abstract
Most modern computational approaches to lexical semantic change detection (LSC) rely on embedding-based distributional word representations with neural networks. Despite the strong performance on LSC benchmarks, they are often opaque. We investigate an alternative method which relies purely on dependency co-occurrence patterns of words. We demonstrate that it is effective for semantic change detection and even outperforms a number of distributional semantic models. We provide an in-depth quantitative and qualitative analysis of the predictions, showing that they are plausible and interpretable.
Cite
@article{arxiv.2601.02891,
title = {Transparent Semantic Change Detection with Dependency-Based Profiles},
author = {Bach Phan-Tat and Kris Heylen and Dirk Geeraerts and Stefano De Pascale and Dirk Speelman},
journal= {arXiv preprint arXiv:2601.02891},
year = {2026}
}