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GloVe: Global Vectors for Word Representation

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Comparisons man -> woman city -> zip comparative -> superlative
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We provide an implementation of the GloVe model for learning word representations, and describe how to download web-dataset vectors or train your own. See the project page or the paper for more information on glove vectors.

Download pre-trained word vectors

The links below contain word vectors obtained from the respective corpora. If you want word vectors trained on massive web datasets, you need only download one of these text files! Pre-trained word vectors are made available under the Public Domain Dedication and License.

Train word vectors on a new corpus

If the web datasets above don't match the semantics of your end use case, you can train word vectors on your own corpus.

$ git clone https://github.com/stanfordnlp/glove
$ cd glove && make
$ ./demo.sh

Make sure you have the following prerequisites installed when running the steps above:

  • GNU Make
  • GCC (Clang pretending to be GCC is fine)
  • Python and NumPy

The demo.sh script downloads a small corpus, consisting of the first 100M characters of Wikipedia. It collects unigram counts, constructs and shuffles cooccurrence data, and trains a simple version of the GloVe model. It also runs a word analogy evaluation script in python to verify word vector quality. More details about training on your own corpus can be found by reading demo.sh or the src/README.md

License

All work contained in this package is licensed under the Apache License, Version 2.0. See the include LICENSE file.

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