mirror of
				https://github.com/explosion/spaCy.git
				synced 2025-10-30 23:47:31 +03:00 
			
		
		
		
	
		
			
				
	
	
		
			67 lines
		
	
	
		
			2.5 KiB
		
	
	
	
		
			Plaintext
		
	
	
	
	
	
			
		
		
	
	
			67 lines
		
	
	
		
			2.5 KiB
		
	
	
	
		
			Plaintext
		
	
	
	
	
	
| //- 💫 DOCS > USAGE > WORD VECTORS & SIMILARITIES
 | |
| 
 | |
| include ../../_includes/_mixins
 | |
| 
 | |
| p
 | |
|     |  Dense, real valued vectors representing distributional similarity
 | |
|     |  information are now a cornerstone of practical NLP. The most common way
 | |
|     |  to train these vectors is the #[+a("https://en.wikipedia.org/wiki/Word2vec") word2vec]
 | |
|     |  family of algorithms.
 | |
| 
 | |
| +aside("Tip")
 | |
|     |  If you need to train a word2vec model, we recommend the implementation in
 | |
|     |  the Python library #[+a("https://radimrehurek.com/gensim/") Gensim].
 | |
| 
 | |
| p
 | |
|     |  spaCy makes using word vectors very easy. The
 | |
|     |  #[+api("lexeme") #[code Lexeme]], #[+api("token") #[code Token]],
 | |
|     |  #[+api("span") #[code Span]] and #[+api("doc") #[code Doc]] classes all
 | |
|     |  have a #[code .vector] property, which is a 1-dimensional numpy array of
 | |
|     |  32-bit floats:
 | |
| 
 | |
| +code.
 | |
|     import numpy
 | |
| 
 | |
|     apples, and_, oranges = nlp(u'apples and oranges')
 | |
|     print(apples.vector.shape)
 | |
|     # (1,)
 | |
|     apples.similarity(oranges)
 | |
| 
 | |
| p
 | |
|     |  By default, #[code Token.vector] returns the vector for its underlying
 | |
|     |  lexeme, while #[code Doc.vector] and #[code Span.vector] return an
 | |
|     |  average of the vectors of their tokens. You can customize these
 | |
|     |  behaviours by modifying the #[code doc.user_hooks],
 | |
|     |  #[code doc.user_span_hooks] and #[code doc.user_token_hooks]
 | |
|     |  dictionaries.
 | |
| 
 | |
| +aside-code("Example").
 | |
|     # TODO
 | |
| 
 | |
| p
 | |
|     |  The default English model installs vectors for one million vocabulary
 | |
|     |  entries, using the 300-dimensional vectors trained on the Common Crawl
 | |
|     |  corpus using the #[+a("http://nlp.stanford.edu/projects/glove/") GloVe]
 | |
|     |  algorithm. The GloVe common crawl vectors have become a de facto
 | |
|     |  standard for practical NLP.
 | |
| 
 | |
| +aside-code("Example").
 | |
|     # TODO
 | |
| 
 | |
| p
 | |
|     |  You can load new word vectors from a file-like buffer using the
 | |
|     |  #[code vocab.load_vectors()] method. The file should be a
 | |
|     |  whitespace-delimited text file, where the word is in the first column,
 | |
|     |  and subsequent columns provide the vector data.  For faster loading, you
 | |
|     |  can use the #[code vocab.vectors_from_bin_loc()] method, which accepts a
 | |
|     |  path to a binary file written by #[code vocab.dump_vectors()].
 | |
| 
 | |
| +aside-code("Example").
 | |
|     # TODO
 | |
| 
 | |
| p
 | |
|     |  You can also load vectors from memory, by writing to the #[code lexeme.vector]
 | |
|     |  property. If the vectors you are writing are of different dimensionality
 | |
|     |  from the ones currently loaded, you should first call
 | |
|     |  #[code vocab.resize_vectors(new_size)].
 |