2015-10-01 09:21:00 +03:00
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import pytest
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2016-01-19 21:23:16 +03:00
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import numpy
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2016-04-17 16:19:17 +03:00
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import os
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2015-10-01 09:21:00 +03:00
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2016-04-17 16:19:17 +03:00
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import spacy
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2015-10-01 09:21:00 +03:00
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from spacy.matcher import Matcher
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2016-01-19 21:23:16 +03:00
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from spacy.attrs import ORTH, LOWER, ENT_IOB, ENT_TYPE
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2016-04-17 16:19:17 +03:00
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from spacy.attrs import ORTH, TAG, LOWER, IS_ALPHA, FLAG63
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2016-04-20 17:40:36 +03:00
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from spacy.symbols import DATE, LOC
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2015-10-19 08:45:12 +03:00
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2015-10-01 09:21:00 +03:00
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def test_overlap_issue118(EN):
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'''Test a bug that arose from having overlapping matches'''
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doc = EN.tokenizer(u'how many points did lebron james score against the boston celtics last night')
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ORG = doc.vocab.strings['ORG']
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2015-10-19 08:45:12 +03:00
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matcher = Matcher(EN.vocab,
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{'BostonCeltics':
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('ORG', {},
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[
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[{LOWER: 'celtics'}],
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[{LOWER: 'boston'}, {LOWER: 'celtics'}],
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]
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)
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}
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)
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assert len(list(doc.ents)) == 0
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2016-09-21 21:45:20 +03:00
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matches = [(ent_type, start, end) for ent_id, ent_type, start, end in matcher(doc)]
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2015-10-19 08:45:12 +03:00
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assert matches == [(ORG, 9, 11), (ORG, 10, 11)]
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2016-09-24 02:17:03 +03:00
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doc.ents = matches[:1]
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2015-10-19 08:45:12 +03:00
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ents = list(doc.ents)
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assert len(ents) == 1
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assert ents[0].label == ORG
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assert ents[0].start == 9
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assert ents[0].end == 11
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2016-04-17 16:19:17 +03:00
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def test_overlap_issue242():
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2016-04-17 16:40:21 +03:00
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'''Test overlapping multi-word phrases.'''
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patterns = [
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[{LOWER: 'food'}, {LOWER: 'safety'}],
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[{LOWER: 'safety'}, {LOWER: 'standards'}],
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]
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if os.environ.get('SPACY_DATA'):
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data_dir = os.environ.get('SPACY_DATA')
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else:
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2016-10-15 15:13:41 +03:00
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data_dir = False
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2016-04-17 16:19:17 +03:00
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2016-10-15 15:13:41 +03:00
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nlp = spacy.en.English(path=data_dir, tagger=False, parser=False, entity=False)
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2016-04-17 16:19:17 +03:00
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nlp.matcher.add('FOOD', 'FOOD', {}, patterns)
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2016-04-17 16:34:23 +03:00
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doc = nlp.tokenizer(u'There are different food safety standards in different countries.')
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2016-09-21 21:45:20 +03:00
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matches = [(ent_type, start, end) for ent_id, ent_type, start, end in nlp.matcher(doc)]
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doc.ents += tuple(matches)
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food_safety, safety_standards = matches
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2016-04-17 16:34:23 +03:00
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assert food_safety[1] == 3
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assert food_safety[2] == 5
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assert safety_standards[1] == 4
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assert safety_standards[2] == 6
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2016-04-17 16:19:17 +03:00
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2015-10-19 08:45:12 +03:00
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def test_overlap_reorder(EN):
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'''Test order dependence'''
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doc = EN.tokenizer(u'how many points did lebron james score against the boston celtics last night')
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ORG = doc.vocab.strings['ORG']
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matcher = Matcher(EN.vocab,
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{'BostonCeltics':
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('ORG', {},
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[
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[{LOWER: 'boston'}, {LOWER: 'celtics'}],
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[{LOWER: 'celtics'}],
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]
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)
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}
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)
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assert len(list(doc.ents)) == 0
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2016-09-21 21:45:20 +03:00
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matches = [(ent_type, start, end) for ent_id, ent_type, start, end in matcher(doc)]
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2015-10-19 08:45:12 +03:00
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assert matches == [(ORG, 9, 11), (ORG, 10, 11)]
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2016-09-24 02:17:03 +03:00
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doc.ents = matches[:1]
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ents = list(doc.ents)
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assert len(ents) == 1
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assert ents[0].label == ORG
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assert ents[0].start == 9
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assert ents[0].end == 11
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def test_overlap_prefix(EN):
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'''Test order dependence'''
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doc = EN.tokenizer(u'how many points did lebron james score against the boston celtics last night')
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ORG = doc.vocab.strings['ORG']
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matcher = Matcher(EN.vocab,
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{'BostonCeltics':
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('ORG', {},
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[
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[{LOWER: 'boston'}],
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[{LOWER: 'boston'}, {LOWER: 'celtics'}],
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]
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)
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}
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)
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assert len(list(doc.ents)) == 0
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2016-09-21 21:45:20 +03:00
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matches = [(ent_type, start, end) for ent_id, ent_type, start, end in matcher(doc)]
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2016-09-24 02:17:03 +03:00
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doc.ents = matches[1:]
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2015-10-19 08:45:12 +03:00
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assert matches == [(ORG, 9, 10), (ORG, 9, 11)]
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ents = list(doc.ents)
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assert len(ents) == 1
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assert ents[0].label == ORG
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assert ents[0].start == 9
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assert ents[0].end == 11
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def test_overlap_prefix_reorder(EN):
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'''Test order dependence'''
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doc = EN.tokenizer(u'how many points did lebron james score against the boston celtics last night')
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ORG = doc.vocab.strings['ORG']
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matcher = Matcher(EN.vocab,
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{'BostonCeltics':
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('ORG', {},
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[
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[{LOWER: 'boston'}, {LOWER: 'celtics'}],
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[{LOWER: 'boston'}],
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]
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)
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}
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)
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2015-10-01 09:21:00 +03:00
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2015-10-19 08:45:12 +03:00
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assert len(list(doc.ents)) == 0
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2016-09-21 21:45:20 +03:00
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matches = [(ent_type, start, end) for ent_id, ent_type, start, end in matcher(doc)]
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2016-09-24 02:17:03 +03:00
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doc.ents += tuple(matches)[1:]
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2015-10-19 08:45:12 +03:00
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assert matches == [(ORG, 9, 10), (ORG, 9, 11)]
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2016-09-24 02:17:03 +03:00
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ents = doc.ents
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2015-10-01 09:21:00 +03:00
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assert len(ents) == 1
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assert ents[0].label == ORG
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assert ents[0].start == 9
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assert ents[0].end == 11
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2016-01-19 21:23:16 +03:00
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2016-04-20 17:40:36 +03:00
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# @pytest.mark.models
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# def test_ner_interaction(EN):
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# EN.matcher.add('LAX_Airport', 'AIRPORT', {}, [[{ORTH: 'LAX'}]])
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# EN.matcher.add('SFO_Airport', 'AIRPORT', {}, [[{ORTH: 'SFO'}]])
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# doc = EN(u'get me a flight from SFO to LAX leaving 20 December and arriving on January 5th')
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2016-04-20 17:40:36 +03:00
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# ents = [(ent.label_, ent.text) for ent in doc.ents]
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# assert ents[0] == ('AIRPORT', 'SFO')
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# assert ents[1] == ('AIRPORT', 'LAX')
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# assert ents[2] == ('DATE', '20 December')
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# assert ents[3] == ('DATE', 'January 5th')
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2016-01-19 21:23:16 +03:00
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2016-04-20 17:40:36 +03:00
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# @pytest.mark.models
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# def test_ner_interaction(EN):
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# # ensure that matcher doesn't overwrite annotations set by the NER model
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# doc = EN.tokenizer.tokens_from_list(u'get me a flight from SFO to LAX leaving 20 December and arriving on January 5th'.split(' '))
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# EN.tagger(doc)
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# columns = [ENT_IOB, ENT_TYPE]
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# values = numpy.ndarray(shape=(len(doc),len(columns)), dtype='int32')
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# # IOB values are 0=missing, 1=I, 2=O, 3=B
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# iobs = [2,2,2,2,2,3,2,3,2,3,1,2,2,2,3,1]
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# types = [0,0,0,0,0,LOC,0,LOC,0,DATE,DATE,0,0,0,DATE,DATE]
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# values[:] = zip(iobs,types)
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# doc.from_array(columns,values)
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# assert doc[5].ent_type_ == 'LOC'
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# assert doc[7].ent_type_ == 'LOC'
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# assert doc[9].ent_type_ == 'DATE'
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# assert doc[10].ent_type_ == 'DATE'
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# assert doc[14].ent_type_ == 'DATE'
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# assert doc[15].ent_type_ == 'DATE'
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# EN.matcher.add('LAX_Airport', 'AIRPORT', {}, [[{ORTH: 'LAX'}]])
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# EN.matcher.add('SFO_Airport', 'AIRPORT', {}, [[{ORTH: 'SFO'}]])
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# EN.matcher(doc)
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# assert doc[5].ent_type_ != 'AIRPORT'
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# assert doc[7].ent_type_ != 'AIRPORT'
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# assert doc[5].ent_type_ == 'LOC'
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# assert doc[7].ent_type_ == 'LOC'
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# assert doc[9].ent_type_ == 'DATE'
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# assert doc[10].ent_type_ == 'DATE'
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# assert doc[14].ent_type_ == 'DATE'
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# assert doc[15].ent_type_ == 'DATE'
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