I need to use gensim to get vector representations of words, and I figure the best thing to use would be a word2vec module that's pre-trained on the english wikipedia corpus. Does anyone know where to download it, how to install it, and how to use gensim to create the vectors?
@imanzabet provided useful links with pre-trained vectors, but if you want to train the models yourself using genism than you need to do two things:
Acquire the Wikipedia data, which you can access here. Looks like the most recent snapshot of English Wikipedia was on the 20th, and it can be found here. I believe the other English-language "wikis" e.g. quotes are captured separately, so if you want to include them you'll need to download those as well.
Finally, I'll point out that there seems to be a blog post describing precisely your use case.
You can check WebVectors to find Word2Vec models trained on various corpora. Models come with readme covering the training details.
You'll have to be a bit careful using these models, though. I'm not sure about all of them, but at least in Wikipedia's case, the model is not a binary file that you can straightforwardly load using e.g.
gensim's functionality, but a txt version, i.e. file with words and corresponding vectors. Keep in mind, though, that the words are appended by their part-of-speech (POS) tags, so for example, if you'd like to use the model to find out similarities for word
vacation, you'll get a
KeyError if you type vacation as is, since the model stores this word as
An example snippet of how you could use the wiki model (perhaps others as well if they're in the same format) and an output is below
import gensim.models model = "./WebVectors/3/enwiki_5_ner.txt" word_vectors = gensim.models.KeyedVectors.load_word2vec_format(model, binary=False) print(word_vectors.most_similar("vacation_NOUN")) print(word_vectors.most_similar(positive=['woman_NOUN', 'king_NOUN'], negative=['man_NOUN']))
and the output
▶ python3 wiki_model.py [('vacation_VERB', 0.6829521656036377), ('honeymoon_NOUN', 0.6811978816986084), ('holiday_NOUN', 0.6588436365127563), ('vacationer_NOUN', 0.6212040781974792), ('resort_NOUN', 0.5720850825309753), ('trip_NOUN', 0.5585346817970276), ('holiday_VERB', 0.5482848882675171), ('week-end_NOUN', 0.5174300670623779), ('newlywed_NOUN', 0.5146450996398926), ('honeymoon_VERB', 0.5135983228683472)] [('monarch_NOUN', 0.6679952144622803), ('ruler_NOUN', 0.6257176995277405), ('regnant_NOUN', 0.6217397451400757), ('royal_ADJ', 0.6212111115455627), ('princess_NOUN', 0.6133661866188049), ('queen_NOUN', 0.6015778183937073), ('kingship_NOUN', 0.5986001491546631), ('prince_NOUN', 0.5900266170501709), ('royal_NOUN', 0.5886058807373047), ('throne_NOUN', 0.5855424404144287)]
UPDATE Here are some useful links to binary models:
Pretrained word embedding models:
- crawl-300d-2M.vec.zip: 2 million word vectors trained on Common Crawl (600B tokens).
- wiki-news-300d-1M.vec.zip: 1 million word vectors trained on Wikipedia 2017, UMBC webbase corpus and statmt.org news dataset (16B tokens).
- wiki-news-300d-1M-subword.vec.zip: 1 million word vectors trained with subword infomation on Wikipedia 2017, UMBC webbase corpus and statmt.org news dataset (16B tokens).
- Wiki word vectors, dim=300: wiki.en.zip: bin+text model
- Pretrained word/phrase vectors:
- Pretrained entity vectors:
- freebase-vectors-skipgram1000.bin.gz: Entity vectors trained on 100B words from various news articles
- freebase-vectors-skipgram1000-en.bin.gz: Entity vectors trained on 100B words from various news articles, using the deprecated /en/ naming (more easily readable); the vectors are sorted by frequency
GloVe: Global Vectors for Word Representation
- glove.6B.zip: Wikipedia 2014 + Gigaword 5 (6B tokens, 400K vocab, uncased, 50d, 100d, 200d, & 300d vectors, 822 MB download). Here's an example in action.
- glove.840B.300d.zip: Common Crawl (840B tokens, 2.2M vocab, cased, 300d vectors, 2.03 GB download)
- models trained on various corpora, augmented by Part-of-Speech (POS) tags