mirror of https://github.com/explosion/spaCy.git
162 lines
6.1 KiB
Python
162 lines
6.1 KiB
Python
from __future__ import unicode_literals, print_function
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import spacy.en
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import spacy.matcher
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from spacy.attrs import ORTH, TAG, LOWER, IS_ALPHA, FLAG63
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import plac
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def main():
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nlp = spacy.en.English()
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example = u"I prefer Siri to Google Now. I'll google now to find out how the google now service works."
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before = nlp(example)
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print("Before")
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for ent in before.ents:
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print(ent.text, ent.label_, [w.tag_ for w in ent])
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# Output:
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# Google ORG [u'NNP']
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# google ORG [u'VB']
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# google ORG [u'NNP']
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nlp.matcher.add(
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"GoogleNow", # Entity ID: Not really used at the moment.
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"PRODUCT", # Entity type: should be one of the types in the NER data
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{"wiki_en": "Google_Now"}, # Arbitrary attributes. Currently unused.
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[ # List of patterns that can be Surface Forms of the entity
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# This Surface Form matches "Google Now", verbatim
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[ # Each Surface Form 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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[ # 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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)
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after = nlp(example)
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print("After")
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for ent in after.ents:
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print(ent.text, ent.label_, [w.tag_ for w in ent])
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# Output
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# Google Now PRODUCT [u'NNP', u'RB']
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# google ORG [u'VB']
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# google now PRODUCT [u'NNP', u'RB']
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#
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# You can customize attribute values in the lexicon, and then refer to the
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# new attributes in your Token Specifiers.
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# This is particularly good for word-set membership.
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#
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australian_capitals = ['Brisbane', 'Sydney', 'Canberra', 'Melbourne', 'Hobart',
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'Darwin', 'Adelaide', 'Perth']
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# Internally, the tokenizer immediately maps each token to a pointer to a
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# LexemeC struct. These structs hold various features, e.g. the integer IDs
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# of the normalized string forms.
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# For our purposes, the key attribute is a 64-bit integer, used as a bit field.
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# spaCy currently only uses 12 of the bits for its built-in features, so
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# the others are available for use. It's best to use the higher bits, as
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# future versions of spaCy may add more flags. For instance, we might add
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# a built-in IS_MONTH flag, taking up FLAG13. So, we bind our user-field to
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# FLAG63 here.
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is_australian_capital = FLAG63
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# Now we need to set the flag value. It's False on all tokens by default,
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# so we just need to set it to True for the tokens we want.
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# Here we iterate over the strings, and set it on only the literal matches.
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for string in australian_capitals:
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lexeme = nlp.vocab[string]
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lexeme.set_flag(is_australian_capital, True)
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print('Sydney', nlp.vocab[u'Sydney'].check_flag(is_australian_capital))
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print('sydney', nlp.vocab[u'sydney'].check_flag(is_australian_capital))
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# If we want case-insensitive matching, we have to be a little bit more
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# round-about, as there's no case-insensitive index to the vocabulary. So
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# we have to iterate over the vocabulary.
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# We'll be looking up attribute IDs in this set a lot, so it's good to pre-build it
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target_ids = {nlp.vocab.strings[s.lower()] for s in australian_capitals}
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for lexeme in nlp.vocab:
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if lexeme.lower in target_ids:
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lexeme.set_flag(is_australian_capital, True)
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print('Sydney', nlp.vocab[u'Sydney'].check_flag(is_australian_capital))
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print('sydney', nlp.vocab[u'sydney'].check_flag(is_australian_capital))
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print('SYDNEY', nlp.vocab[u'SYDNEY'].check_flag(is_australian_capital))
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# Output
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# Sydney True
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# sydney False
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# Sydney True
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# sydney True
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# SYDNEY True
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#
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# The key thing to note here is that we're setting these attributes once,
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# over the vocabulary --- and then reusing them at run-time. This means the
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# amortized complexity of anything we do this way is going to be O(1). You
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# can match over expressions that need to have sets with tens of thousands
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# of values, e.g. "all the street names in Germany", and you'll still have
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# O(1) complexity. Most regular expression algorithms don't scale well to
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# this sort of problem.
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#
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# Now, let's use this in a pattern
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nlp.matcher.add("AuCitySportsTeam", "ORG", {},
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[
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[
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{LOWER: "the"},
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{is_australian_capital: True},
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{TAG: "NNS"}
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],
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[
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{LOWER: "the"},
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{is_australian_capital: True},
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{TAG: "NNPS"}
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],
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[
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{LOWER: "the"},
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{IS_ALPHA: True}, # Allow a word in between, e.g. The Western Sydney
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{is_australian_capital: True},
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{TAG: "NNS"}
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],
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[
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{LOWER: "the"},
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{IS_ALPHA: True}, # Allow a word in between, e.g. The Western Sydney
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{is_australian_capital: True},
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{TAG: "NNPS"}
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]
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])
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doc = nlp(u'The pattern should match the Brisbane Broncos and the South Darwin Spiders, but not the Colorado Boulders')
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for ent in doc.ents:
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print(ent.text, ent.label_)
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# Output
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# the Brisbane Broncos ORG
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# the South Darwin Spiders ORG
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# Output
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# Before
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# Google ORG [u'NNP']
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# google ORG [u'VB']
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# google ORG [u'NNP']
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# After
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# Google Now PRODUCT [u'NNP', u'RB']
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# google ORG [u'VB']
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# google now PRODUCT [u'NNP', u'RB']
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# Sydney True
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# sydney False
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# Sydney True
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# sydney True
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# SYDNEY True
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# the Brisbane Broncos ORG
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# the South Darwin Spiders ORG
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if __name__ == '__main__':
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main()
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