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Solvency
3y ago
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Out of curiosity related to the word vectorization algorithm...why does one word not perform as well? Whats the cause/rationale?
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julien040
3y ago
It's pure speculation, but articles embeddings are computed using 512 tokens, which is roughly equivalent to 400 words. I think that using only one word does not allow the model to fully understand the context.
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