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I read this answer on cosine similarity of two strings. However, the vectors computed are the word frequencies just relative to each string. What if I have two strings, string1 and string2, and I want to find their cosine similarity relative to a larger document, given I have a table of the tf-idf weights of all tokens in the document?

So far I've started with this:

def cosine_similarity(str1, str2, tdidf_table):
  vec1 = {}
  vec2 = {}

  tokens = Array of all tokens in both strings
  unique_words = set()

  for tok in tokens:
      unique_words.add(tok)

  for word in unique_words:
      vec1[word] = tfidf_table(word, idfs)
      vec2[word] = tfidf_table(word, idfs)


  ...???

  return dotproduct(vec1,vec2) / (magnitude(vec1)*magnitude(vec2)

But...obviously the "for word in unique_words" loop is incorrect, I'm not sure what the vector should represent for each string. I was also studying this article on cosine similarity but again, the weights are relative to each string. Can someone point me in the right direction? Thanks so much.

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