I have had the gensim Word2Vec implementation compute some word embeddings for me. Everything went quite fantastically as far as I can tell; now I am clustering the word vectors created, hoping to get some semantic groupings.
As a next step, I would like to look at the words (rather than the vectors) contained in each cluster. I.e. if I have the vector of embeddings
[x, y, z], I would like to find out which actual word this vector represents. I can get the words/Vocab items by calling
model.vocab and the word vectors through
model.syn0. But I could not find a location where these are explicitly matched.
This was more complicated than I expected and I feel I might be missing the obvious way of doing it. Any help is appreciated!
Match words to embedding vectors created by
Word2Vec () -- how do I do it?
After creating the model (code below*), I would now like to match the indexes assigned to each word (during the
build_vocab() phase) to the vector matrix outputted as
for i in range (0, newmod.syn0.shape): #iterate over all words in model print i word= [k for k in newmod.vocab if newmod.vocab[k].__dict__['index']==i] #get the word out of the internal dicationary by its index wordvector= newmod.syn0[i] #get the vector with the corresponding index print wordvector == newmod[word] #testing: compare result of looking up the word in the model -- this prints True
Is there a better way of doing this, e.g. by feeding the vector into the model to match the word?
Does this even get me correct results?
*My code to create the word vectors:
model = Word2Vec(size=1000, min_count=5, workers=4, sg=1) model.build_vocab(sentencefeeder(folderlist)) #sentencefeeder puts out sentences as lists of strings model.save("newmodel")
I found this question which is similar but has not really been answered.