# How to check if a key exists in a word2vec trained model or not

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?

convert the model into vectors with

word_vectors = model.wv


then we can use

if 'word' in word_vectors.vocab


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

• @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
• 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

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

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

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.

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: