Publication | Open Access
XL-WSD: An Extra-Large and Cross-Lingual Evaluation Framework for Word Sense Disambiguation
41
Citations
52
References
2021
Year
Llm Fine-tuningEngineeringMachine LearningTransformer-based ArchitecturesCross-lingual RepresentationWsd TaskSemantic WebSemanticsLarge Language ModelText MiningCross-lingual Evaluation FrameworkApplied LinguisticsNatural Language ProcessingInformation RetrievalComputational LinguisticsLanguage StudiesMachine TranslationEntity DisambiguationNlp TaskPre-trained ModelsDistributional SemanticsLexical ResourceZero-shot Knowledge TransferCross-lingual Natural Language ProcessingLinguisticsWord-sense DisambiguationWord Sense Disambiguation
Transformer-based architectures brought a breeze of change to Word Sense Disambiguation (WSD), improving models' performances by a large margin. The fast development of new approaches has been further encouraged by a well-framed evaluation suite for English, which has allowed their performances to be kept track of and compared fairly. However, other languages have remained largely unexplored, as testing data are available for a few languages only and the evaluation setting is rather matted. In this paper, we untangle this situation by proposing XL-WSD, a cross-lingual evaluation benchmark for the WSD task featuring sense-annotated development and test sets in 18 languages from six different linguistic families, together with language-specific silver training data. We leverage XL-WSD datasets to conduct an extensive evaluation of neural and knowledge-based approaches, including the most recent multilingual language models. Results show that the zero-shot knowledge transfer across languages is a promising research direction within the WSD field, especially when considering low-resourced languages where large pre-trained multilingual models still perform poorly. We make the evaluation suite and the code for performing the experiments available at https://sapienzanlp.github.io/xl-wsd/.
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