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Related Questions
- How do word embeddings handle homographs, such as 'bank' and 'bank account'?
- Can you explain the concept of polysemy in word embeddings and how they capture the nuances of polysemous words?
- What techniques are used in word embeddings to represent multiple meanings of a single word, like 'bank'?
- How do word embeddings distinguish between different senses of a polysemous word, such as 'bank' as a financial institution and 'bank' as the side of a river?
- What role do context and co-occurrence play in word embeddings when representing polysemous words like 'bank'?
- Can you provide examples of how word embeddings, such as Word2Vec or GloVe, capture the nuances of polysemous words like 'bank'?
- What are the limitations of word embeddings in capturing the complexities of polysemous words, and how can they be improved?
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