XL-DURel: Finetuning Sentence Transformers for Ordinal Word-in-Context Classification
Yadav, Sachin, Schlechtweg, Dominik
–arXiv.org Artificial Intelligence
We propose XL-DURel, a finetuned, multilingual Sentence Transformer model optimized for ordinal Word-in-Context classification. We test several loss functions for regression and ranking tasks managing to outperform previous models on ordinal and binary data with a ranking objective based on angular distance in complex space. We further show that binary WiC can be treated as a special case of ordinal WiC and that optimizing models for the general ordinal task improves performance on the more specific binary task. This paves the way for a unified treatment of WiC modeling across different task formulations.
arXiv.org Artificial Intelligence
Nov-7-2025
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