Meaning of words constantly change given the events in modern civilization. Large Language Models use word embeddings, which are often static and thus cannot cope with this semantic change. Thus,it is important to resolve ambiguity in word meanings. This paper is an effort in this direction, where we explore methods for word sense disambiguation for the EvoNLP shared task. We conduct rigorous ablations for two solutions to this problem. We see that an approach using time-aware language models helps this task. Furthermore, we explore possible future directions to this problem.
CITATION STYLE
Godbole, M., Dandavate, P., & Kane, A. (2022). Temporal Word Meaning Disambiguation using TimeLMs. In EvoNLP 2022 - 1st Workshop on Ever Evolving NLP, Proceedings of the Workshop (pp. 55–60). Association for Computational Linguistics (ACL). https://doi.org/10.18653/v1/2022.evonlp-1.8
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