2024
DOI: 10.3390/app14135550
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Reversal of the Word Sense Disambiguation Task Using a Deep Learning Model

Algirdas Laukaitis

Abstract: Word sense disambiguation (WSD) remains a persistent challenge in the natural language processing (NLP) community. While various NLP packages exist, the Lesk algorithm in the NLTK library demonstrates suboptimal accuracy. In this research article, we propose an innovative methodology and an open-source framework that effectively addresses the challenges of WSD by optimizing memory usage without compromising accuracy. Our system seamlessly integrates WSD into NLP tasks, offering functionality similar to that pr… Show more

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