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I want to create a text file that is essentially a dictionary, with each word being paired with its vector representation through word2vec. I'm assuming the process would be to first train word2vec and then look-up each word from my list and find its representation (and then save it in a new text file)?

I'm new to word2vec and I don't know how to go about doing this. I've read from several of the main sites, and several of the questions on Stack, and haven't found a good tutorial yet.

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  • It's quite easy. I had done that in past. Do you want to use any specific language? You can directly use author's code (in C++) to train and extract the vectors. It's simple 600-700 lines of optimized code. I might be able to help with exact arguments if you require it.
    – Naman
    Commented Jul 15, 2015 at 23:01
  • I would prefer Java, but all I really need to do is make a dictionary with any language and then load that text file into my Java program, so any language would probably work
    – jonbon
    Commented Jul 15, 2015 at 23:03
  • 1
    code.google.com/p/word2vec is the original author's code. It's very simple to train. Only thing is this output the vector into a binary file. You can easily convert it to a text file.
    – Naman
    Commented Jul 15, 2015 at 23:08
  • @Naman I'm trying to work with word vector output and as you said some of the words are just represented as numbers. I am working on the part they assigned binary codes to words, but still couldn't decipher it fully. Any suggestion would be great help!
    – patti_jane
    Commented Jul 27, 2016 at 18:43
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    @patti_jane Sure, you can look into radimrehurek.com/gensim/models/word2vec.html if you are comfortable using python and gensim. It gives you a nice wrapper and some basic functions. If you want pure python code, I can give you that once I am on my personal PC.
    – Naman
    Commented Jul 27, 2016 at 19:44

9 Answers 9

25

The direct access model[word] is deprecated and will be removed in Gensim 4.0.0 in order to separate the training and the embedding. The command should be replaced with, simply, model.wv[word].

Using Gensim in Python, after vocabs are built and the model trained, you can find the word count and sampling information already mapped in model.wv.vocab, where model is the variable name of your Word2Vec object.

Thus, to create a dictionary object, you may:

my_dict = dict({})
for idx, key in enumerate(model.wv.vocab):
    my_dict[key] = model.wv[key]
    # Or my_dict[key] = model.wv.get_vector(key)
    # Or my_dict[key] = model.wv.word_vec(key, use_norm=False)

Now that you have your dictionary, you can write it to a file with whatever means you like. For example, you can use the pickle library. Alternatively, if you are using Jupyter Notebook, they have a convenient 'magic command' %store my_dict > filename.txt. Your filename.txt will look like:

{'one': array([-0.06590105,  0.01573388,  0.00682817,  0.53970253, -0.20303348,
   -0.24792041,  0.08682659, -0.45504045,  0.89248925,  0.0655603 ,
   ......
   -0.8175681 ,  0.27659689,  0.22305458,  0.39095637,  0.43375066,
    0.36215973,  0.4040089 , -0.72396156,  0.3385369 , -0.600869  ],
  dtype=float32),
 'two': array([ 0.04694849,  0.13303463, -0.12208422,  0.02010536,  0.05969441,
   -0.04734801, -0.08465996,  0.10344813,  0.03990637,  0.07126121,
    ......
    0.31673026,  0.22282903, -0.18084198, -0.07555179,  0.22873943,
   -0.72985399, -0.05103955, -0.10911274, -0.27275378,  0.01439812],
  dtype=float32),
 'three': array([-0.21048863,  0.4945509 , -0.15050395, -0.29089224, -0.29454648,
    0.3420335 , -0.3419629 ,  0.87303966,  0.21656844, -0.07530259,
    ......
   -0.80034876,  0.02006451,  0.5299498 , -0.6286509 , -0.6182588 ,
   -1.0569025 ,  0.4557548 ,  0.4697938 ,  0.8928275 , -0.7877308 ],
  dtype=float32),
  'four': ......
}

You may also wish to look into the native save / load methods of Gensim's word2vec.

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  • 1
    What is the difference between model.wv.get_vector() and model.wv.word_vec()?
    – E.K.
    Commented Oct 13, 2020 at 19:15
  • Given methods are deprecated now Commented Oct 27, 2023 at 0:10
  • Yet another popular open source python data science library that loves to break their APIs because they can't be bothered to design it well enough the first time. Commented Nov 21, 2023 at 22:47
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Gensim tutorial explains it very clearly.

First, you should create word2vec model - either by training it on text, e.g.

 model = Word2Vec(sentences, size=100, window=5, min_count=5, workers=4)

or by loading pre-trained model (you can find them here, for example).

Then iterate over all your words and check for their vectors in the model:

for word in words:
  vector = model[word]

Having that, just write word and vector formatted as you want.

2
  • Hi, can you add what exactly are words. Whether it is vocab for model.wv.vocab or the words from your corpus.
    – Sunanda
    Commented Mar 7, 2020 at 17:37
  • It should be list(model.wv.vocab.keys()) Commented Sep 25, 2020 at 5:03
3

You can Directly get the vectors through

model = Word2Vec(sentences, size=100, window=5, min_count=5, workers=4)
model.wv.vectors

and words through

model.wv.vocab.keys()

Hope it helps !

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  • Using this method, the vectors do not correspond to the words obtained by taking the keys. That is, the the order is not the same, not even when keys are sorted.
    – Sunanda
    Commented Mar 7, 2020 at 17:46
  • After attempting a few things, I found that model.wv[model.wv.vocab.keys()] gives the vectors in the order of keys.
    – Sunanda
    Commented Mar 7, 2020 at 19:06
  • Hi, After getting the vector, it's not fitting to the model, can you please help me with that, Im stumbling from moring
    – Aravind R
    Commented Mar 19, 2022 at 12:44
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If you are willing to use python with gensim package, then building upon this answer and Gensim Word2Vec Documentation you could do something like this

from gensim.models import Word2Vec

# Take some sample sentences
tokenized_sentences = [["here","is","one"],["and","here","is","another"]]

# Initialise model, for more information, please check the Gensim Word2vec documentation
model = Word2Vec(tokenized_sentences, size=100, window=2, min_count=0)

# Get the ordered list of words in the vocabulary
words = model.wv.vocab.keys()

# Make a dictionary
we_dict = {word:model.wv[word] for word in words}
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  • Your method does not preserve the order of the words. The resulting dict contains the order as and another here is one. Is there a way to preserve the order of the sentence?
    – spectre
    Commented Jan 27, 2022 at 18:17
  • @spectre - Python dictionaries do not retain order, so you might have to use an ordered dictionary for that. So you can import collections and define we_dict = collections.OrderedDict(). Just remember to use the loop without dictionary comprehension to save the results. Hope that helps.
    – Sunanda
    Commented Jan 31, 2022 at 12:04
1

Gensim 4.0 updates: vocab method is depreciated and change in how to parse a word's vector

Get the ordered list of words in the vocabulary

words = list(w for w in model.wv.index_to_key)

Get the vector for 'also'

print(model.wv['also'])

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  • 1
    As it’s currently written, your answer is unclear. Please edit to add additional details that will help others understand how this addresses the question asked. You can find more information on how to write good answers in the help center.
    – Community Bot
    Commented Feb 21, 2022 at 20:58
1

First train your Word2Vec model like you said.

To get key-vector pairs of a list of words, you can use a convenient method .vectors_for_all that Gensim now provides for KeyedVectors object.

example:

words = ["apple", "machine", "learning]
word_vectors = model.wv.vectors_for_all(words)

The result is also a KeyedVectors object. After getting the vectors you can do whatever you want.

0

Using basic python:

all_vectors = []
for index, vector in enumerate(model.wv.vectors):
    vector_object = {}
    vector_object[list(model.wv.vocab.keys())[index]] = vector
    all_vectors.append(vector_object)
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For gensim 4.0:

my_dict = dict({})

for word in word_list:
     my_dict[word] = model.wv.get_vector('0', norm = True) 
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I would suggest this, you may find anything you need including Word2Vec, FastText, Doc2Vec, KeyedVectors and so on...

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