36

I have trained a word2vec model using a corpus of documents with Gensim. Once the model is training, I am writing the following piece of code to get the raw feature vector of a word say "view".

myModel["view"]

However, I get a KeyError for the word which is probably because this doesn't exist as a key in the list of keys indexed by word2vec. How can I check if a key exits in the index before trying to get the raw feature vector?

30

convert the model into vectors with

word_vectors = model.wv

then we can use

if 'word' in word_vectors.vocab
38

Word2Vec also provides a 'vocab' member, which you can access directly.

Using a pythonistic approach:

if word in w2v_model.vocab:
    # Do something

EDIT Since gensim release 2.0, the API for Word2Vec changed. To access the vocabulary you should now use this:

if word in w2v_model.wv.vocab:
    # Do something

EDIT 2 The attribute 'wv' is being deprecated and will be completed removed in gensim 4.0.0. Now it's back to the original answer by OP:

if word in w2v_model.vocab:
    # Do something
6
  • 1
    @MohitJain And how does that not provider an answer to his question? I think my answer makes perfect sense, considering this is exactly the code I use myself to solve this problem. – Matt Fortier Jun 30 '15 at 1:52
  • 1
    One liners without explanations are more suitable for comments. You can garner more upvotes if you can add brief explanation for readers like me. – Mohit Jain Jun 30 '15 at 2:21
  • Thanks for explanation, noted! – Matt Fortier Jun 30 '15 at 3:14
  • If using gensim use rather gensim.models.Word2Vec.wv.vocab as indicated by rakaT below – Titou May 16 '17 at 15:18
  • @Titou Yes, the interface for gensim Word2Vec changed. Thanks for pointing it out! – Matt Fortier May 17 '17 at 2:59
2

Answering my own question here.

Word2Vec provides a method named contains('view') which returns True or False based on whether the corresponding word has been indexed or not.

1
  • 7
    For future reference, this doesn't work anomore. 'Word2Vec' object has no attribute 'contains' – CentAu Dec 13 '15 at 23:32
1

I generally use a filter:

for doc in labeled_corpus:
    words = filter(lambda x: x in model.vocab, doc.words)

This is one simple method for getting past the KeyError on unseen words.

0

Hey i know am getting late this post, but here is a piece of code that can handle this issue well. I myself using it in my code and it works like a charm :)

   size = 300 #word vector size
   word = 'food' #word token

   try:
        wordVector = model[word].reshape((1, size))
   except KeyError:
        print "not found! ",  word

NOTE: I am using python Gensim Library for word2vec models

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.