This tool provides an efficient implementation of the continuous bag-of-words and skip-gram architectures for computing vector representations of words. These representations can be subsequently used in many natural language processing applications and for further research.
git clone https://github.com/minhpqn/word2vec
The word2vec tool takes a text corpus as input and produces the word vectors as output. It first constructs a vocabulary from the training text data and then learns vector representation of words. The resulting word vector file can be used as features in many natural language processing and machine learning applications.
A simple way to investigate the learned representations is to find the closest words for a user-specified word. The distance tool serves that purpose. For example, if you enter 'france', distance will display the most similar words and their distances to 'france', which should look like:
spain 0.678515
belgium 0.665923
netherlands 0.652428
italy 0.633130
switzerland 0.622323
luxembourg 0.610033
portugal 0.577154
russia 0.571507
germany 0.563291
catalonia 0.534176
There are two main learning algorithms in word2vec : continuous bag-of-words and continuous skip-gram. The switch -cbow allows the user to pick one of these learning algorithms. Both algorithms learn the representation of a word that is useful for prediction of other words in the sentence. These algorithms are described in detail in [1,2].
It was recently shown that the word vectors capture many linguistic regularities, for example vector operations vector('Paris') - vector('France') + vector('Italy')
results in a vector that is very close to ``vector('Rome'), and
vector('king') - vector('man') + vector('woman')is close to
vector('queen')``` [3, 1]. You can try out a simple demo by running demo-analogy.sh.
To observe strong regularities in the word vector space, it is needed to train the models on large data set, with sufficient vector dimensionality as shown in [1]. Using the word2vec tool, it is possible to train models on huge data sets (up to hundreds of billions of words).
In certain applications, it is useful to have vector representation of larger pieces of text. For example, it is desirable to have only one vector for representing 'san francisco'. This can be achieved by pre-processing the training data set to form the phrases using the word2phrase tool, as is shown in the example script ./demo-phrases.sh. The example output with the closest tokens to 'san_francisco' looks like:
los_angeles 0.666175
golden_gate 0.571522
oakland 0.557521
california 0.554623
san_diego 0.534939
pasadena 0.519115
seattle 0.512098
taiko 0.507570
houston 0.499762
chicago_illinois 0.491598
The linearity of the vector operations seems to weakly hold also for the addition of several vectors, so it is possible to add several word or phrase vectors to form representation of short sentences [2].
Several factors influence the quality of the word vectors: amount and quality of the training data size of the vectors * training algorithm
The quality of the vectors is crucial for any application. However, exploration of different hyper-parameter settings for complex tasks might be too time demanding. Thus, we designed simple test sets that can be used to quickly evaluate the word vector quality.
For the word relation test set described in [1], see ./demo-word-accuracy.sh, for the phrase relation test set described in [2], see ./demo-phrase-accuracy.sh. Note that the accuracy depends heavily on the amount of the training data; our best results for both test sets are above 70% accuracy with coverage close to 100%.
The word vectors can be also used for deriving word classes from huge data sets. This is achieved by performing K-means clustering on top of the word vectors. The script that demonstrates this is ./demo-classes.sh. The output is a vocabulary file with words and their corresponding class IDs, such as:
carnivores 234 carnivorous 234 cetaceans 234 cormorant 234 coyotes 234 crocodile 234 crocodiles 234 crustaceans 234 cultivated 234 danios 234 . . . acceptance 412 argue 412 argues 412 arguing 412 argument 412 arguments 412 belief 412 believe 412 challenge 412 claim 412
The training speed can be significantly improved by using parallel training on multiple-CPU machine (use the switch '-threads N'). The hyper-parameter choice is crucial for performance (both speed and accuracy), however varies for different applications. The main choices to make are:
The quality of the word vectors increases significantly with amount of the training data. For research purposes, you can consider using data sets that are available on-line:
We are publishing pre-trained vectors trained on part of Google News dataset (about 100 billion words). The model contains 300-dimensional vectors for 3 million words and phrases. The phrases were obtained using a simple data-driven approach described in [2]. The archive is available here: GoogleNews-vectors-negative300.bin.gz.
An example output of ./distance GoogleNews-vectors-negative300.bin
:
Enter word or sentence (EXIT to break): Chinese river
Yangtze_River 0.667376
Yangtze 0.644091
Qiantang_River 0.632979
Yangtze_tributary 0.623527 Xiangjiang_River 0.615482 Huangpu_River 0.604726 Hanjiang_River 0.598110 Yangtze_river 0.597621 Hongze_Lake 0.594108 Yangtse 0.593442 ```
The above example will average vectors for words 'Chinese' and 'river' and will return the closest neighbors to the resulting vector. More examples that demonstrate results of vector addition are presented in [2]. Note that more precise and disambiguated entity vectors can be found in the following dataset that uses Freebase naming.
We are also offering more than 1.4M pre-trained entity vectors with naming from Freebase. This is especially helpful for projects related to knowledge mining.
Here is an example output of ./distance freebase-vectors-skipgram1000-en.bin:
Enter word or sentence (EXIT to break): /en/geoffrey_hinton
/en/marvin_minsky 0.457204 /en/paul_corkum 0.443342
/en/william_richard_peltier 0.432396 /en/brenda_milner 0.430886 /en/john_charles_polanyi 0.419538 /en/leslie_valiant 0.416399 /en/hava_siegelmann 0.411895 /en/hans_moravec 0.406726 /en/david_rumelhart 0.405275 /en/godel_prize 0.405176 ```
Thank you for trying out this toolkit, and do not forget to let us know when you obtain some amazing results! We hope that the distributed representations will significantly improve the state of the art in NLP.
[1] Tomas Mikolov, Kai Chen, Greg Corrado, and Jeffrey Dean. Efficient Estimation of Word Representations in Vector Space. In Proceedings of Workshop at ICLR, 2013.
[2] Tomas Mikolov, Ilya Sutskever, Kai Chen, Greg Corrado, and Jeffrey Dean. Distributed Representations of Words and Phrases and their Compositionality. In Proceedings of NIPS, 2013.
[3] Tomas Mikolov, Wen-tau Yih, and Geoffrey Zweig. Linguistic Regularities in Continuous Space Word Representations. In Proceedings of NAACL HLT, 2013.
Feel free to send us a link to your project or research paper related to word2vec that you think will be useful or interesting for the others.
This open source project is NOT a Google product, and is released for research purposes only.