I have been experimenting with the doc2vec module for sometime now. I can train my model and have the trained model output similar documents for a given document as follows :

import re

st = 'long description of a document as string'
doc = re.sub('[^a-zA-Z]', ' ', st).lower().split() 

new_doc_vec = modelloaded.infer_vector(doc)


This works well, and gives me 10 results. Is there a way to get more than 10 results or is that the limit?

1 Answer 1


I found it:

modelloaded.docvecs.most_similar([new_doc_vec], topn=N)

the topn=N handle can be used to get more than 10 results.


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