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workshop paper
Similarity-Based Cluster Merging for Semantic Change Modeling
keywords:
word sense discrimination
semantic change modeling
historical semantic change
language change detection
word sense induction
diachronic corpora
word sense disambiguation
clustering
multilingual
This paper describes our contribution to Subtask 1 of the AXOLOTL-24 Shared Task on unsupervised lexical semantic change modeling. In a joint task of word sense disambiguation and word sense induction on diachronic corpora, we significantly outperform the baseline by merging clusters of modern usage examples based on their similarities with the same historical word sense as well as their mutual similarities. We observe that multilingual sentence embeddings outperform language-specific ones in this task.