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			62 lines
		
	
	
		
			2.4 KiB
		
	
	
	
		
			Plaintext
		
	
	
	
	
	
include ../../_includes/_mixins
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p.u-text-large spaCy features a rule-matching engine that operates over tokens. The rules can refer to token annotations and flags, and matches support callbacks to accept, modify and/or act on the match. The rule matcher also allows you to associate patterns with entity IDs, to allow some basic entity linking or disambiguation.
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+code("python", "Matcher Example").
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    from spacy.matcher import Matcher
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    from spacy.attributes import *
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    import spacy
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    nlp = spacy.load('en', parser=False, entity=False)
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    matcher = Matcher(nlp.vocab)
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    matcher.add_entity(
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        "GoogleNow", # Entity ID -- Helps you act on the match.
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        {"ent_type": "PRODUCT", "wiki_en": "Google_Now"}, # Arbitrary attributes (optional)
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        acceptor=None, # Accept or modify the match
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        on_match=merge_phrases # Callback to act on the matches
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    )
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    matcher.add_pattern(
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        "GoogleNow", # Entity ID -- Created if doesn't exist.
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        [ # The pattern is a list of *Token Specifiers*.
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            { # This Token Specifier matches tokens whose orth field is "Google"
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              ORTH: "Google"
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            },
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            { # This Token Specifier matches tokens whose orth field is "Now"
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              ORTH: "Now"
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            }
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        ],
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        label=None # Can associate a label to the pattern-match, to handle it better.
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    )
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    doc = nlp(u"I prefer Siri to Google Now.")
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    matches = matcher(doc)
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    for ent_id, label, start, end in matches:
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        print(nlp.strings[ent_id], nlp.strings[label], doc[start : end].text)
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        entity = matcher.get_entity(ent_id)
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        print(entity)
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    matcher.add_pattern(
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        "GoogleNow",
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        [ # This Surface Form matches "google now", verbatim, and requires
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          # "google" to have the NNP tag. This helps prevent the pattern from
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          # matching cases like "I will google now to look up the time"
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          {
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            ORTH: "google",
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            TAG: "NNP"
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          },
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          {
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            ORTH: "now"
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          }
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        ]
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    )
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    doc = nlp(u"I'll google now to find out how the google now service works.")
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    matches = matcher(doc)
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    for ent_id, label, start, end in matches:
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        print(ent_id, label, start, end, doc[start : end].text)
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    # Because we specified the on_match=merge_phrases callback,
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    # we should see 'google now' as a single token.
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    for token in doc:
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        print(token.text, token.lemma_, token.tag_, token.ent_type_)
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