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Related Questions
- How do contextual word embeddings, such as BERT, improve disambiguation compared to non-contextual embeddings like Word2Vec?
- Can you explain the concept of polysemy and how contextual word embeddings address it?
- What are some examples of words that are more easily disambiguated using contextual word embeddings?
- How do non-contextual word embeddings, such as Word2Vec, handle disambiguation?
- What are the limitations of non-contextual word embeddings in disambiguation?
- Can you compare and contrast the performance of contextual and non-contextual word embeddings on a disambiguation task?
- How do contextual word embeddings capture the nuances of word meaning in different contexts?
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