spaCy/spacy/tests/regression/test_issue1501-2000.py
Adriane Boyd e962784531
Add Lemmatizer and simplify related components (#5848)
* Add Lemmatizer and simplify related components

* Add `Lemmatizer` pipe with `lookup` and `rule` modes using the
`Lookups` tables.
* Reduce `Tagger` to a simple tagger that sets `Token.tag` (no pos or lemma)
* Reduce `Morphology` to only keep track of morph tags (no tag map, lemmatizer,
or morph rules)
* Remove lemmatizer from `Vocab`
* Adjust many many tests

Differences:

* No default lookup lemmas
* No special treatment of TAG in `from_array` and similar required
* Easier to modify labels in a `Tagger`
* No extra strings added from morphology / tag map

* Fix test

* Initial fix for Lemmatizer config/serialization

* Adjust init test to be more generic

* Adjust init test to force empty Lookups

* Add simple cache to rule-based lemmatizer

* Convert language-specific lemmatizers

Convert language-specific lemmatizers to component lemmatizers. Remove
previous lemmatizer class.

* Fix French and Polish lemmatizers

* Remove outdated UPOS conversions

* Update Russian lemmatizer init in tests

* Add minimal init/run tests for custom lemmatizers

* Add option to overwrite existing lemmas

* Update mode setting, lookup loading, and caching

* Make `mode` an immutable property
* Only enforce strict `load_lookups` for known supported modes
* Move caching into individual `_lemmatize` methods

* Implement strict when lang is not found in lookups

* Fix tables/lookups in make_lemmatizer

* Reallow provided lookups and allow for stricter checks

* Add lookups asset to all Lemmatizer pipe tests

* Rename lookups in lemmatizer init test

* Clean up merge

* Refactor lookup table loading

* Add helper from `load_lemmatizer_lookups` that loads required and
optional lookups tables based on settings provided by a config.

Additional slight refactor of lookups:

* Add `Lookups.set_table` to set a table from a provided `Table`
* Reorder class definitions to be able to specify type as `Table`

* Move registry assets into test methods

* Refactor lookups tables config

Use class methods within `Lemmatizer` to provide the config for
particular modes and to load the lookups from a config.

* Add pipe and score to lemmatizer

* Simplify Tagger.score

* Add missing import

* Clean up imports and auto-format

* Remove unused kwarg

* Tidy up and auto-format

* Update docstrings for Lemmatizer

Update docstrings for Lemmatizer.

Additionally modify `is_base_form` API to take `Token` instead of
individual features.

* Update docstrings

* Remove tag map values from Tagger.add_label

* Update API docs

* Fix relative link in Lemmatizer API docs
2020-08-07 15:27:13 +02:00

349 lines
11 KiB
Python

import pytest
import gc
import numpy
import copy
from spacy.gold import Example
from spacy.lang.en import English
from spacy.lang.en.stop_words import STOP_WORDS
from spacy.lang.lex_attrs import is_stop
from spacy.vectors import Vectors
from spacy.vocab import Vocab
from spacy.language import Language
from spacy.tokens import Doc, Span, Token
from spacy.attrs import HEAD, DEP
from spacy.matcher import Matcher
from ..util import make_tempdir
def test_issue1506():
def string_generator():
for _ in range(10001):
yield "It's sentence produced by that bug."
for _ in range(10001):
yield "I erase some hbdsaj lemmas."
for _ in range(10001):
yield "I erase lemmas."
for _ in range(10001):
yield "It's sentence produced by that bug."
for _ in range(10001):
yield "It's sentence produced by that bug."
nlp = English()
for i, d in enumerate(nlp.pipe(string_generator())):
# We should run cleanup more than one time to actually cleanup data.
# In first run — clean up only mark strings as «not hitted».
if i == 10000 or i == 20000 or i == 30000:
gc.collect()
for t in d:
str(t.lemma_)
def test_issue1518():
"""Test vectors.resize() works."""
vectors = Vectors(shape=(10, 10))
vectors.add("hello", row=2)
vectors.resize((5, 9))
def test_issue1537():
"""Test that Span.as_doc() doesn't segfault."""
string = "The sky is blue . The man is pink . The dog is purple ."
doc = Doc(Vocab(), words=string.split())
doc[0].sent_start = True
for word in doc[1:]:
if word.nbor(-1).text == ".":
word.sent_start = True
else:
word.sent_start = False
sents = list(doc.sents)
sent0 = sents[0].as_doc()
sent1 = sents[1].as_doc()
assert isinstance(sent0, Doc)
assert isinstance(sent1, Doc)
# TODO: Currently segfaulting, due to l_edge and r_edge misalignment
# def test_issue1537_model():
# nlp = load_spacy('en')
# doc = nlp('The sky is blue. The man is pink. The dog is purple.')
# sents = [s.as_doc() for s in doc.sents]
# print(list(sents[0].noun_chunks))
# print(list(sents[1].noun_chunks))
def test_issue1539():
"""Ensure vectors.resize() doesn't try to modify dictionary during iteration."""
v = Vectors(shape=(10, 10), keys=[5, 3, 98, 100])
v.resize((100, 100))
def test_issue1547():
"""Test that entity labels still match after merging tokens."""
words = ["\n", "worda", ".", "\n", "wordb", "-", "Biosphere", "2", "-", " \n"]
doc = Doc(Vocab(), words=words)
doc.ents = [Span(doc, 6, 8, label=doc.vocab.strings["PRODUCT"])]
with doc.retokenize() as retokenizer:
retokenizer.merge(doc[5:7])
assert [ent.text for ent in doc.ents]
def test_issue1612(en_tokenizer):
doc = en_tokenizer("The black cat purrs.")
span = doc[1:3]
assert span.orth_ == span.text
def test_issue1654():
nlp = Language(Vocab())
assert not nlp.pipeline
@Language.component("component")
def component(doc):
return doc
nlp.add_pipe("component", name="1")
nlp.add_pipe("component", name="2", after="1")
nlp.add_pipe("component", name="3", after="2")
assert nlp.pipe_names == ["1", "2", "3"]
nlp2 = Language(Vocab())
assert not nlp2.pipeline
nlp2.add_pipe("component", name="3")
nlp2.add_pipe("component", name="2", before="3")
nlp2.add_pipe("component", name="1", before="2")
assert nlp2.pipe_names == ["1", "2", "3"]
@pytest.mark.parametrize("text", ["test@example.com", "john.doe@example.co.uk"])
def test_issue1698(en_tokenizer, text):
doc = en_tokenizer(text)
assert len(doc) == 1
assert not doc[0].like_url
def test_issue1727():
"""Test that models with no pretrained vectors can be deserialized
correctly after vectors are added."""
nlp = Language(Vocab())
data = numpy.ones((3, 300), dtype="f")
vectors = Vectors(data=data, keys=["I", "am", "Matt"])
tagger = nlp.create_pipe("tagger")
tagger.add_label("PRP")
assert tagger.cfg.get("pretrained_dims", 0) == 0
tagger.vocab.vectors = vectors
with make_tempdir() as path:
tagger.to_disk(path)
tagger = nlp.create_pipe("tagger").from_disk(path)
assert tagger.cfg.get("pretrained_dims", 0) == 0
def test_issue1757():
"""Test comparison against None doesn't cause segfault."""
doc = Doc(Vocab(), words=["a", "b", "c"])
assert not doc[0] < None
assert not doc[0] is None
assert doc[0] >= None
assert not doc[:2] < None
assert not doc[:2] is None
assert doc[:2] >= None
assert not doc.vocab["a"] is None
assert not doc.vocab["a"] < None
def test_issue1758(en_tokenizer):
"""Test that "would've" is handled by the English tokenizer exceptions."""
tokens = en_tokenizer("would've")
assert len(tokens) == 2
def test_issue1773(en_tokenizer):
"""Test that spaces don't receive a POS but no TAG. This is the root cause
of the serialization issue reported in #1773."""
doc = en_tokenizer("\n")
if doc[0].pos_ == "SPACE":
assert doc[0].tag_ != ""
def test_issue1799():
"""Test sentence boundaries are deserialized correctly, even for
non-projective sentences."""
heads_deps = numpy.asarray(
[
[1, 397],
[4, 436],
[2, 426],
[1, 402],
[0, 8206900633647566924],
[18446744073709551615, 440],
[18446744073709551614, 442],
],
dtype="uint64",
)
doc = Doc(Vocab(), words="Just what I was looking for .".split())
doc.vocab.strings.add("ROOT")
doc = doc.from_array([HEAD, DEP], heads_deps)
assert len(list(doc.sents)) == 1
def test_issue1807():
"""Test vocab.set_vector also adds the word to the vocab."""
vocab = Vocab(vectors_name="test_issue1807")
assert "hello" not in vocab
vocab.set_vector("hello", numpy.ones((50,), dtype="f"))
assert "hello" in vocab
def test_issue1834():
"""Test that sentence boundaries & parse/tag flags are not lost
during serialization."""
string = "This is a first sentence . And another one"
doc = Doc(Vocab(), words=string.split())
doc[6].sent_start = True
new_doc = Doc(doc.vocab).from_bytes(doc.to_bytes())
assert new_doc[6].sent_start
assert not new_doc.is_parsed
assert not new_doc.is_tagged
doc.is_parsed = True
doc.is_tagged = True
new_doc = Doc(doc.vocab).from_bytes(doc.to_bytes())
assert new_doc.is_parsed
assert new_doc.is_tagged
def test_issue1868():
"""Test Vocab.__contains__ works with int keys."""
vocab = Vocab()
lex = vocab["hello"]
assert lex.orth in vocab
assert lex.orth_ in vocab
assert "some string" not in vocab
int_id = vocab.strings.add("some string")
assert int_id not in vocab
def test_issue1883():
matcher = Matcher(Vocab())
matcher.add("pat1", [[{"orth": "hello"}]])
doc = Doc(matcher.vocab, words=["hello"])
assert len(matcher(doc)) == 1
new_matcher = copy.deepcopy(matcher)
new_doc = Doc(new_matcher.vocab, words=["hello"])
assert len(new_matcher(new_doc)) == 1
@pytest.mark.parametrize("word", ["the"])
def test_issue1889(word):
assert is_stop(word, STOP_WORDS) == is_stop(word.upper(), STOP_WORDS)
@pytest.mark.skip(reason="obsolete with the config refactor of v.3")
def test_issue1915():
cfg = {"hidden_depth": 2} # should error out
nlp = Language()
ner = nlp.add_pipe("ner")
ner.add_label("answer")
with pytest.raises(ValueError):
nlp.begin_training(**cfg)
def test_issue1945():
"""Test regression in Matcher introduced in v2.0.6."""
matcher = Matcher(Vocab())
matcher.add("MWE", [[{"orth": "a"}, {"orth": "a"}]])
doc = Doc(matcher.vocab, words=["a", "a", "a"])
matches = matcher(doc) # we should see two overlapping matches here
assert len(matches) == 2
assert matches[0][1:] == (0, 2)
assert matches[1][1:] == (1, 3)
def test_issue1963(en_tokenizer):
"""Test that doc.merge() resizes doc.tensor"""
doc = en_tokenizer("a b c d")
doc.tensor = numpy.ones((len(doc), 128), dtype="f")
with doc.retokenize() as retokenizer:
retokenizer.merge(doc[0:2])
assert len(doc) == 3
assert doc.tensor.shape == (3, 128)
@pytest.mark.parametrize("label", ["U-JOB-NAME"])
def test_issue1967(label):
nlp = Language()
config = {
"learn_tokens": False,
"min_action_freq": 30,
}
ner = nlp.create_pipe("ner", config=config)
example = Example.from_dict(
Doc(ner.vocab, words=["word"]),
{
"ids": [0],
"words": ["word"],
"tags": ["tag"],
"heads": [0],
"deps": ["dep"],
"entities": [label],
},
)
assert "JOB-NAME" in ner.moves.get_actions(examples=[example])[1]
def test_issue1971(en_vocab):
# Possibly related to #2675 and #2671?
matcher = Matcher(en_vocab)
pattern = [
{"ORTH": "Doe"},
{"ORTH": "!", "OP": "?"},
{"_": {"optional": True}, "OP": "?"},
{"ORTH": "!", "OP": "?"},
]
Token.set_extension("optional", default=False)
matcher.add("TEST", [pattern])
doc = Doc(en_vocab, words=["Hello", "John", "Doe", "!"])
# We could also assert length 1 here, but this is more conclusive, because
# the real problem here is that it returns a duplicate match for a match_id
# that's not actually in the vocab!
matches = matcher(doc)
assert all([match_id in en_vocab.strings for match_id, start, end in matches])
def test_issue_1971_2(en_vocab):
matcher = Matcher(en_vocab)
pattern1 = [{"ORTH": "EUR", "LOWER": {"IN": ["eur"]}}, {"LIKE_NUM": True}]
pattern2 = [{"LIKE_NUM": True}, {"ORTH": "EUR"}] # {"IN": ["EUR"]}}]
doc = Doc(en_vocab, words=["EUR", "10", "is", "10", "EUR"])
matcher.add("TEST1", [pattern1, pattern2])
matches = matcher(doc)
assert len(matches) == 2
def test_issue_1971_3(en_vocab):
"""Test that pattern matches correctly for multiple extension attributes."""
Token.set_extension("a", default=1, force=True)
Token.set_extension("b", default=2, force=True)
doc = Doc(en_vocab, words=["hello", "world"])
matcher = Matcher(en_vocab)
matcher.add("A", [[{"_": {"a": 1}}]])
matcher.add("B", [[{"_": {"b": 2}}]])
matches = sorted((en_vocab.strings[m_id], s, e) for m_id, s, e in matcher(doc))
assert len(matches) == 4
assert matches == sorted([("A", 0, 1), ("A", 1, 2), ("B", 0, 1), ("B", 1, 2)])
def test_issue_1971_4(en_vocab):
"""Test that pattern matches correctly with multiple extension attribute
values on a single token.
"""
Token.set_extension("ext_a", default="str_a", force=True)
Token.set_extension("ext_b", default="str_b", force=True)
matcher = Matcher(en_vocab)
doc = Doc(en_vocab, words=["this", "is", "text"])
pattern = [{"_": {"ext_a": "str_a", "ext_b": "str_b"}}] * 3
matcher.add("TEST", [pattern])
matches = matcher(doc)
# Uncommenting this caused a segmentation fault
assert len(matches) == 1
assert matches[0] == (en_vocab.strings["TEST"], 0, 3)