5

The official documentation of token.tag_ in spaCy is as follows:

A fine-grained, more detailed tag that represents the word-class and some basic morphological information for the token. These tags are primarily designed to be good features for subsequent models, particularly the syntactic parser. They are language and treebank dependent. The tagger is trained to predict these fine-grained tags, and then a mapping table is used to reduce them to the coarse-grained .pos tags.

But it doesn't list the full available tags and each tag's explanation. Where can I find it?

7

Finally I found it inside spaCy's source code: tag_map.json. And this link explains the meaning of different tags.

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  • This link is dead – Clement Attlee Dec 29 '17 at 22:33
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    As of today, this links to what I asume is the same data – patrick Mar 12 '18 at 15:54
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    Have you found a way to programmatically get this map from spacy? – stan0 Dec 3 '18 at 16:42
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    Answering my own comment - the Tokenizer has the right method - nlp.tokenizer.vocab.morphology.tag_map – stan0 Dec 4 '18 at 7:05
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Here is the list of tags:

TAG_MAP = [
    ".",        
    ",",        
    "-LRB-",    
    "-RRB-",    
    "``",       
    "\"\"",     
    "''",       
    ",",        
    "$",        
    "#",        
    "AFX",      
    "CC",       
    "CD",       
    "DT",       
    "EX",       
    "FW",       
    "HYPH",     
    "IN",       
    "JJ",       
    "JJR",      
    "JJS",      
    "LS",       
    "MD",       
    "NIL",      
    "NN",       
    "NNP",      
    "NNPS",     
    "NNS",   
    "PDT",   
    "POS",   
    "PRP",   
    "PRP$",  
    "RB",    
    "RBR",   
    "RBS",   
    "RP",    
    "SP",    
    "SYM",   
    "TO",    
    "UH",    
    "VB",    
    "VBD",  
    "VBG",  
    "VBN",  
    "VBP",  
    "VBZ",  
    "WDT",  
    "WP",   
    "WP$",  
    "WRB",  
    "ADD",  
    "NFP",   
    "GW",    
    "XX",    
    "BES",   
    "HVS",   
    "_SP",   
]
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1

Available values for token.tag_ are language specific. With language here, I don't mean English or Portuguese, I mean 'en_core_web_sm' or 'pt_core_news_sm'. In other words, they are language model specific and they are defined in the TAG_MAP, which is customizable and trainable. If you don't customize it, it will be default TAG_MAP for that language.

As of the writing of this answer, spacy.io/models lists all of the pre trained models and their labeling scheme.

Now, for the explanations. If you are working with English or German text, you're in luck! You can use spacy.explain() or access its glossary on github for the full list. If you are working with other languages, token.pos_ values are always those of Universal dependencies and will work regardless.

To finish up, if you are working with other languages, for a full explanation of the tags, you are going to have to look for them in the sources listed in the models page for your model of interest. For instance, for Portuguese I had to track the explanations for the tags in the Portuguese UD Bosque Corpus used to train the model.

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0

Here is the list of tags and POS Spacy uses in the below link.

https://spacy.io/api/annotation

  1. Universal parts of speech tags
  2. English
  3. German
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