spaCy/spacy/tests/regression/test_issue2501-3000.py

229 lines
8.7 KiB
Python
Raw Normal View History

2019-02-08 17:51:13 +03:00
# coding: utf8
from __future__ import unicode_literals
import pytest
2019-02-24 22:31:38 +03:00
from spacy import displacy
2019-02-08 17:51:13 +03:00
from spacy.lang.en import English
from spacy.lang.ja import Japanese
from spacy.lang.xx import MultiLanguage
from spacy.language import Language
from spacy.matcher import Matcher
2019-02-24 22:31:38 +03:00
from spacy.tokens import Doc, Span
2019-02-08 17:51:13 +03:00
from spacy.vocab import Vocab
2019-02-24 22:31:38 +03:00
from spacy.compat import pickle
2019-02-08 17:51:13 +03:00
from spacy._ml import link_vectors_to_models
import numpy
2019-02-24 23:03:39 +03:00
import random
2019-02-08 17:51:13 +03:00
from ..util import get_doc
def test_issue2564():
"""Test the tagger sets is_tagged correctly when used via Language.pipe."""
nlp = Language()
tagger = nlp.create_pipe("tagger")
with pytest.warns(UserWarning):
tagger.begin_training() # initialise weights
2019-02-08 17:51:13 +03:00
nlp.add_pipe(tagger)
doc = nlp("hello world")
assert doc.is_tagged
docs = nlp.pipe(["hello", "world"])
piped_doc = next(docs)
assert piped_doc.is_tagged
def test_issue2569(en_tokenizer):
"""Test that operator + is greedy."""
doc = en_tokenizer("It is May 15, 1993.")
doc.ents = [Span(doc, 2, 6, label=doc.vocab.strings["DATE"])]
matcher = Matcher(doc.vocab)
matcher.add("RULE", [[{"ENT_TYPE": "DATE", "OP": "+"}]])
2019-02-08 17:51:13 +03:00
matched = [doc[start:end] for _, start, end in matcher(doc)]
matched = sorted(matched, key=len, reverse=True)
assert len(matched) == 10
assert len(matched[0]) == 4
assert matched[0].text == "May 15, 1993"
@pytest.mark.parametrize(
"text",
[
"ABLEItemColumn IAcceptance Limits of ErrorIn-Service Limits of ErrorColumn IIColumn IIIColumn IVColumn VComputed VolumeUnder Registration of\xa0VolumeOver Registration of\xa0VolumeUnder Registration of\xa0VolumeOver Registration of\xa0VolumeCubic FeetCubic FeetCubic FeetCubic FeetCubic Feet1Up to 10.0100.0050.0100.005220.0200.0100.0200.010350.0360.0180.0360.0184100.0500.0250.0500.0255Over 100.5% of computed volume0.25% of computed volume0.5% of computed volume0.25% of computed volume TABLE ItemColumn IAcceptance Limits of ErrorIn-Service Limits of ErrorColumn IIColumn IIIColumn IVColumn VComputed VolumeUnder Registration of\xa0VolumeOver Registration of\xa0VolumeUnder Registration of\xa0VolumeOver Registration of\xa0VolumeCubic FeetCubic FeetCubic FeetCubic FeetCubic Feet1Up to 10.0100.0050.0100.005220.0200.0100.0200.010350.0360.0180.0360.0184100.0500.0250.0500.0255Over 100.5% of computed volume0.25% of computed volume0.5% of computed volume0.25% of computed volume ItemColumn IAcceptance Limits of ErrorIn-Service Limits of ErrorColumn IIColumn IIIColumn IVColumn VComputed VolumeUnder Registration of\xa0VolumeOver Registration of\xa0VolumeUnder Registration of\xa0VolumeOver Registration of\xa0VolumeCubic FeetCubic FeetCubic FeetCubic FeetCubic Feet1Up to 10.0100.0050.0100.005220.0200.0100.0200.010350.0360.0180.0360.0184100.0500.0250.0500.0255Over 100.5% of computed volume0.25% of computed volume0.5% of computed volume0.25% of computed volume",
"oow.jspsearch.eventoracleopenworldsearch.technologyoraclesolarissearch.technologystoragesearch.technologylinuxsearch.technologyserverssearch.technologyvirtualizationsearch.technologyengineeredsystemspcodewwmkmppscem:",
],
)
def test_issue2626_2835(en_tokenizer, text):
"""Check that sentence doesn't cause an infinite loop in the tokenizer."""
doc = en_tokenizer(text)
assert doc
2019-02-24 22:31:38 +03:00
def test_issue2656(en_tokenizer):
"""Test that tokenizer correctly splits of punctuation after numbers with
decimal points.
"""
doc = en_tokenizer("I went for 40.3, and got home by 10.0.")
assert len(doc) == 11
assert doc[0].text == "I"
assert doc[1].text == "went"
assert doc[2].text == "for"
assert doc[3].text == "40.3"
assert doc[4].text == ","
assert doc[5].text == "and"
assert doc[6].text == "got"
assert doc[7].text == "home"
assert doc[8].text == "by"
assert doc[9].text == "10.0"
assert doc[10].text == "."
2019-02-08 17:51:13 +03:00
def test_issue2671():
"""Ensure the correct entity ID is returned for matches with quantifiers.
See also #2675
"""
nlp = English()
matcher = Matcher(nlp.vocab)
pattern_id = "test_pattern"
pattern = [
{"LOWER": "high"},
{"IS_PUNCT": True, "OP": "?"},
{"LOWER": "adrenaline"},
]
matcher.add(pattern_id, [pattern])
2019-02-08 17:51:13 +03:00
doc1 = nlp("This is a high-adrenaline situation.")
doc2 = nlp("This is a high adrenaline situation.")
matches1 = matcher(doc1)
for match_id, start, end in matches1:
assert nlp.vocab.strings[match_id] == pattern_id
matches2 = matcher(doc2)
for match_id, start, end in matches2:
assert nlp.vocab.strings[match_id] == pattern_id
2019-02-24 22:31:38 +03:00
def test_issue2728(en_vocab):
"""Test that displaCy ENT visualizer escapes HTML correctly."""
doc = Doc(en_vocab, words=["test", "<RELEASE>", "test"])
doc.ents = [Span(doc, 0, 1, label="TEST")]
html = displacy.render(doc, style="ent")
assert "&lt;RELEASE&gt;" in html
doc.ents = [Span(doc, 1, 2, label="TEST")]
html = displacy.render(doc, style="ent")
assert "&lt;RELEASE&gt;" in html
2019-02-08 17:51:13 +03:00
def test_issue2754(en_tokenizer):
"""Test that words like 'a' and 'a.m.' don't get exceptional norm values."""
a = en_tokenizer("a")
assert a[0].norm_ == "a"
am = en_tokenizer("am")
assert am[0].norm_ == "am"
def test_issue2772(en_vocab):
"""Test that deprojectivization doesn't mess up sentence boundaries."""
words = "When we write or communicate virtually , we can hide our true feelings .".split()
# A tree with a non-projective (i.e. crossing) arc
# The arcs (0, 4) and (2, 9) cross.
heads = [4, 1, 7, -1, -2, -1, 3, 2, 1, 0, -1, -2, -1]
deps = ["dep"] * len(heads)
doc = get_doc(en_vocab, words=words, heads=heads, deps=deps)
assert doc[1].is_sent_start is None
@pytest.mark.parametrize("text", ["-0.23", "+123,456", "±1"])
@pytest.mark.parametrize("lang_cls", [English, MultiLanguage])
def test_issue2782(text, lang_cls):
"""Check that like_num handles + and - before number."""
nlp = lang_cls()
doc = nlp(text)
assert len(doc) == 1
assert doc[0].like_num
2019-02-24 23:03:39 +03:00
def test_issue2800():
"""Test issue that arises when too many labels are added to NER model.
Used to cause segfault.
"""
train_data = []
train_data.extend([("One sentence", {"entities": []})])
entity_types = [str(i) for i in range(1000)]
nlp = English()
ner = nlp.create_pipe("ner")
nlp.add_pipe(ner)
for entity_type in list(entity_types):
ner.add_label(entity_type)
optimizer = nlp.begin_training()
for i in range(20):
losses = {}
random.shuffle(train_data)
for statement, entities in train_data:
nlp.update((statement, entities), sgd=optimizer, losses=losses, drop=0.5)
2019-02-24 23:03:39 +03:00
2019-02-24 22:31:38 +03:00
def test_issue2822(it_tokenizer):
"""Test that the abbreviation of poco is kept as one word."""
doc = it_tokenizer("Vuoi un po' di zucchero?")
assert len(doc) == 6
assert doc[0].text == "Vuoi"
assert doc[1].text == "un"
assert doc[2].text == "po'"
assert doc[2].lemma_ == "poco"
assert doc[3].text == "di"
assert doc[4].text == "zucchero"
assert doc[5].text == "?"
def test_issue2833(en_vocab):
"""Test that a custom error is raised if a token or span is pickled."""
doc = Doc(en_vocab, words=["Hello", "world"])
with pytest.raises(NotImplementedError):
pickle.dumps(doc[0])
with pytest.raises(NotImplementedError):
pickle.dumps(doc[0:2])
2019-02-08 17:51:13 +03:00
def test_issue2871():
"""Test that vectors recover the correct key for spaCy reserved words."""
words = ["dog", "cat", "SUFFIX"]
2019-09-16 16:16:54 +03:00
vocab = Vocab(vectors_name="test_issue2871")
2019-02-08 17:51:13 +03:00
vocab.vectors.resize(shape=(3, 10))
vector_data = numpy.zeros((3, 10), dtype="f")
for word in words:
_ = vocab[word] # noqa: F841
vocab.set_vector(word, vector_data[0])
vocab.vectors.name = "dummy_vectors"
link_vectors_to_models(vocab)
assert vocab["dog"].rank == 0
assert vocab["cat"].rank == 1
assert vocab["SUFFIX"].rank == 2
assert vocab.vectors.find(key="dog") == 0
assert vocab.vectors.find(key="cat") == 1
assert vocab.vectors.find(key="SUFFIX") == 2
def test_issue2901():
"""Test that `nlp` doesn't fail."""
try:
nlp = Japanese()
except ImportError:
pytest.skip()
doc = nlp("pythonが大好きです")
assert doc
2019-02-24 22:31:38 +03:00
def test_issue2926(fr_tokenizer):
"""Test that the tokenizer correctly splits tokens separated by a slash (/)
ending in a digit.
"""
doc = fr_tokenizer("Learn html5/css3/javascript/jquery")
assert len(doc) == 8
assert doc[0].text == "Learn"
assert doc[1].text == "html5"
assert doc[2].text == "/"
assert doc[3].text == "css3"
assert doc[4].text == "/"
assert doc[5].text == "javascript"
assert doc[6].text == "/"
assert doc[7].text == "jquery"