mirror of
https://github.com/explosion/spaCy.git
synced 2024-11-11 20:28:20 +03:00
Merge branch 'master' into spacy.io
This commit is contained in:
commit
4c863aeb06
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@ -67,7 +67,7 @@ valuable if it's shared publicly, so that more people can benefit from it.
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- Non-destructive **tokenization**
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- **Named entity** recognition
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- Support for **49+ languages**
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- Support for **50+ languages**
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- Pre-trained [statistical models](https://spacy.io/models) and word vectors
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- State-of-the-art speed
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- Easy **deep learning** integration
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@ -70,15 +70,33 @@ def merge_sents(sents):
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return [(m_deps, m_brackets)]
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def align(cand_words, gold_words):
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if cand_words == gold_words:
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alignment = numpy.arange(len(cand_words))
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def align(tokens_a, tokens_b):
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"""Calculate alignment tables between two tokenizations, using the Levenshtein
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algorithm. The alignment is case-insensitive.
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tokens_a (List[str]): The candidate tokenization.
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tokens_b (List[str]): The reference tokenization.
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RETURNS: (tuple): A 5-tuple consisting of the following information:
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* cost (int): The number of misaligned tokens.
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* a2b (List[int]): Mapping of indices in `tokens_a` to indices in `tokens_b`.
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For instance, if `a2b[4] == 6`, that means that `tokens_a[4]` aligns
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to `tokens_b[6]`. If there's no one-to-one alignment for a token,
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it has the value -1.
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* b2a (List[int]): The same as `a2b`, but mapping the other direction.
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* a2b_multi (Dict[int, int]): A dictionary mapping indices in `tokens_a`
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to indices in `tokens_b`, where multiple tokens of `tokens_a` align to
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the same token of `tokens_b`.
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* b2a_multi (Dict[int, int]): As with `a2b_multi`, but mapping the other
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direction.
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"""
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if tokens_a == tokens_b:
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alignment = numpy.arange(len(tokens_a))
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return 0, alignment, alignment, {}, {}
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cand_words = [w.replace(" ", "").lower() for w in cand_words]
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gold_words = [w.replace(" ", "").lower() for w in gold_words]
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cost, i2j, j2i, matrix = _align.align(cand_words, gold_words)
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i2j_multi, j2i_multi = _align.multi_align(i2j, j2i, [len(w) for w in cand_words],
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[len(w) for w in gold_words])
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tokens_a = [w.replace(" ", "").lower() for w in tokens_a]
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tokens_b = [w.replace(" ", "").lower() for w in tokens_b]
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cost, i2j, j2i, matrix = _align.align(tokens_a, tokens_b)
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i2j_multi, j2i_multi = _align.multi_align(i2j, j2i, [len(w) for w in tokens_a],
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[len(w) for w in tokens_b])
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for i, j in list(i2j_multi.items()):
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if i2j_multi.get(i+1) != j and i2j_multi.get(i-1) != j:
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i2j[i] = j
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@ -1,7 +1,6 @@
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# coding: utf8
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from __future__ import unicode_literals
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import pytest
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import spacy
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from spacy.util import minibatch, compounding
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@ -9,27 +8,25 @@ from spacy.util import minibatch, compounding
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def test_issue3611():
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""" Test whether adding n-grams in the textcat works even when n > token length of some docs """
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unique_classes = ["offensive", "inoffensive"]
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x_train = ["This is an offensive text",
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x_train = [
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"This is an offensive text",
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"This is the second offensive text",
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"inoff"]
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"inoff",
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]
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y_train = ["offensive", "offensive", "inoffensive"]
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# preparing the data
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pos_cats = list()
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for train_instance in y_train:
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pos_cats.append({label: label == train_instance for label in unique_classes})
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train_data = list(zip(x_train, [{'cats': cats} for cats in pos_cats]))
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train_data = list(zip(x_train, [{"cats": cats} for cats in pos_cats]))
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# set up the spacy model with a text categorizer component
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nlp = spacy.blank('en')
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nlp = spacy.blank("en")
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textcat = nlp.create_pipe(
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"textcat",
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config={
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"exclusive_classes": True,
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"architecture": "bow",
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"ngram_size": 2
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}
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config={"exclusive_classes": True, "architecture": "bow", "ngram_size": 2},
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)
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for label in unique_classes:
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nlp.add_pipe(textcat, last=True)
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# training the network
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other_pipes = [pipe for pipe in nlp.pipe_names if pipe != 'textcat']
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other_pipes = [pipe for pipe in nlp.pipe_names if pipe != "textcat"]
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with nlp.disable_pipes(*other_pipes):
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optimizer = nlp.begin_training()
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for i in range(3):
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for batch in batches:
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texts, annotations = zip(*batch)
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nlp.update(docs=texts, golds=annotations, sgd=optimizer, drop=0.1, losses=losses)
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nlp.update(
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docs=texts,
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golds=annotations,
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sgd=optimizer,
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drop=0.1,
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losses=losses,
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)
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@ -3,8 +3,10 @@ from __future__ import unicode_literals
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from spacy.lang.hi import Hindi
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def test_issue3625():
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"""Test that default punctuation rules applies to hindi unicode characters"""
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nlp = Hindi()
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doc = nlp(u"hi. how हुए. होटल, होटल")
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assert [token.text for token in doc] == ['hi', '.', 'how', 'हुए', '.', 'होटल', ',', 'होटल']
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doc = nlp("hi. how हुए. होटल, होटल")
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expected = ["hi", ".", "how", "हुए", ".", "होटल", ",", "होटल"]
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assert [token.text for token in doc] == expected
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# coding: utf8
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from __future__ import unicode_literals
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import pytest
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from spacy.matcher import Matcher
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from spacy.tokens import Doc
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@ -2,7 +2,6 @@
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from __future__ import unicode_literals
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import pytest
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from spacy.attrs import IS_ALPHA
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from spacy.lang.en import English
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@pytest.mark.parametrize(
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"sentence",
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[
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'The story was to the effect that a young American student recently called on Professor Christlieb with a letter of introduction.',
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'The next month Barry Siddall joined Stoke City on a free transfer, after Chris Pearce had established himself as the Vale\'s #1.',
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'The next month Barry Siddall joined Stoke City on a free transfer, after Chris Pearce had established himself as the Vale\'s number one',
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'Indeed, making the one who remains do all the work has installed him into a position of such insolent tyranny, it will take a month at least to reduce him to his proper proportions.',
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"It was a missed assignment, but it shouldn't have resulted in a turnover ..."
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"The story was to the effect that a young American student recently called on Professor Christlieb with a letter of introduction.",
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"The next month Barry Siddall joined Stoke City on a free transfer, after Chris Pearce had established himself as the Vale's #1.",
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"The next month Barry Siddall joined Stoke City on a free transfer, after Chris Pearce had established himself as the Vale's number one",
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"Indeed, making the one who remains do all the work has installed him into a position of such insolent tyranny, it will take a month at least to reduce him to his proper proportions.",
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"It was a missed assignment, but it shouldn't have resulted in a turnover ...",
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],
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)
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def test_issue3869(sentence):
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count += token.is_alpha
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assert count == doc.count_by(IS_ALPHA).get(1, 0)
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22
spacy/tests/regression/test_issue3951.py
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22
spacy/tests/regression/test_issue3951.py
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# coding: utf8
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from __future__ import unicode_literals
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import pytest
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from spacy.matcher import Matcher
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from spacy.tokens import Doc
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@pytest.mark.xfail
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def test_issue3951(en_vocab):
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"""Test that combinations of optional rules are matched correctly."""
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matcher = Matcher(en_vocab)
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pattern = [
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{"LOWER": "hello"},
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{"LOWER": "this", "OP": "?"},
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{"OP": "?"},
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{"LOWER": "world"},
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]
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matcher.add("TEST", None, pattern)
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doc = Doc(en_vocab, words=["Hello", "my", "new", "world"])
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matches = matcher(doc)
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assert len(matches) == 0
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spacy/tests/regression/test_issue3972.py
Normal file
18
spacy/tests/regression/test_issue3972.py
Normal file
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# coding: utf8
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from __future__ import unicode_literals
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import pytest
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from spacy.matcher import PhraseMatcher
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from spacy.tokens import Doc
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@pytest.mark.xfail
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def test_issue3972(en_vocab):
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"""Test that the PhraseMatcher returns duplicates for duplicate match IDs.
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"""
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matcher = PhraseMatcher(en_vocab)
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matcher.add("A", None, Doc(en_vocab, words=["New", "York"]))
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matcher.add("B", None, Doc(en_vocab, words=["New", "York"]))
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doc = Doc(en_vocab, words=["I", "live", "in", "New", "York"])
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matches = matcher(doc)
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assert len(matches) == 2
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@ -76,6 +76,50 @@ Convert a list of Doc objects into the
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| `id` | int | ID to assign to the JSON. Defaults to `0`. |
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| **RETURNS** | list | The data in spaCy's JSON format. |
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### gold.align {#align tag="function"}
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Calculate alignment tables between two tokenizations, using the Levenshtein
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algorithm. The alignment is case-insensitive.
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> #### Example
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>
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> ```python
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> from spacy.gold import align
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>
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> bert_tokens = ["obama", "'", "s", "podcast"]
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> spacy_tokens = ["obama", "'s", "podcast"]
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> alignment = align(bert_tokens, spacy_tokens)
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> cost, a2b, b2a, a2b_multi, b2a_multi = alignment
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> ```
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| Name | Type | Description |
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| ----------- | ----- | -------------------------------------------------------------------------- |
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| `tokens_a` | list | String values of candidate tokens to align. |
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| `tokens_b` | list | String values of reference tokens to align. |
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| **RETURNS** | tuple | A `(cost, a2b, b2a, a2b_multi, b2a_multi)` tuple describing the alignment. |
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The returned tuple contains the following alignment information:
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> #### Example
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>
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> ```python
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> a2b = array([0, -1, -1, 2])
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> b2a = array([0, 2, 3])
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> a2b_multi = {1: 1, 2: 1}
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> b2a_multi = {}
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> ```
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>
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> If `a2b[3] == 2`, that means that `tokens_a[3]` aligns to `tokens_b[2]`. If
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> there's no one-to-one alignment for a token, it has the value `-1`.
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| Name | Type | Description |
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| ----------- | -------------------------------------- | ----------------------------------------------------------------------------------------------------------------------------------------------- |
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| `cost` | int | The number of misaligned tokens. |
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| `a2b` | `numpy.ndarray[ndim=1, dtype='int32']` | One-to-one mappings of indices in `tokens_a` to indices in `tokens_b`. |
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| `b2a` | `numpy.ndarray[ndim=1, dtype='int32']` | One-to-one mappings of indices in `tokens_b` to indices in `tokens_a`. |
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| `a2b_multi` | dict | A dictionary mapping indices in `tokens_a` to indices in `tokens_b`, where multiple tokens of `tokens_a` align to the same token of `tokens_b`. |
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| `b2a_multi` | dict | A dictionary mapping indices in `tokens_b` to indices in `tokens_a`, where multiple tokens of `tokens_b` align to the same token of `tokens_a`. |
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### gold.biluo_tags_from_offsets {#biluo_tags_from_offsets tag="function"}
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Encode labelled spans into per-token tags, using the
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@ -963,6 +963,71 @@ Once you have a [`Doc`](/api/doc) object, you can write to its attributes to set
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the part-of-speech tags, syntactic dependencies, named entities and other
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attributes. For details, see the respective usage pages.
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### Aligning tokenization {#aligning-tokenization}
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spaCy's tokenization is non-destructive and uses language-specific rules
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optimized for compatibility with treebank annotations. Other tools and resources
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can sometimes tokenize things differently – for example, `"I'm"` →
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`["I", "'", "m"]` instead of `["I", "'m"]`.
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In cases like that, you often want to align the tokenization so that you can
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merge annotations from different sources together, or take vectors predicted by
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a [pre-trained BERT model](https://github.com/huggingface/pytorch-transformers)
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and apply them to spaCy tokens. spaCy's [`gold.align`](/api/goldparse#align)
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helper returns a `(cost, a2b, b2a, a2b_multi, b2a_multi)` tuple describing the
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number of misaligned tokens, the one-to-one mappings of token indices in both
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directions and the indices where multiple tokens align to one single token.
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> #### ✏️ Things to try
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>
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> 1. Change the capitalization in one of the token lists – for example,
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> `"obama"` to `"Obama"`. You'll see that the alignment is case-insensitive.
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> 2. Change `"podcasts"` in `other_tokens` to `"pod", "casts"`. You should see
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> that there are now 4 misaligned tokens and that the new many-to-one mapping
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> is reflected in `a2b_multi`.
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> 3. Make `other_tokens` and `spacy_tokens` identical. You'll see that the
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> `cost` is `0` and all corresponding mappings are also identical.
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```python
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### {executable="true"}
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from spacy.gold import align
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other_tokens = ["i", "listened", "to", "obama", "'", "s", "podcasts", "."]
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spacy_tokens = ["i", "listened", "to", "obama", "'s", "podcasts", "."]
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cost, a2b, b2a, a2b_multi, b2a_multi = align(other_tokens, spacy_tokens)
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print("Misaligned tokens:", cost) # 2
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print("One-to-one mappings a -> b", a2b) # array([0, 1, 2, 3, -1, -1, 5, 6])
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print("One-to-one mappings b -> a", b2a) # array([0, 1, 2, 3, 5, 6, 7])
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print("Many-to-one mappings a -> b", a2b_multi) # {4: 4, 5: 4}
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print("Many-to-one mappings b-> a", b2a_multi) # {}
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```
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Here are some insights from the alignment information generated in the example
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above:
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- Two tokens are misaligned.
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- The one-to-one mappings for the first four tokens are identical, which means
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they map to each other. This makes sense because they're also identical in the
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input: `"i"`, `"listened"`, `"to"` and `"obama"`.
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- The index mapped to `a2b[6]` is `5`, which means that `other_tokens[6]`
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(`"podcasts"`) aligns to `spacy_tokens[6]` (also `"podcasts"`).
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- `a2b[4]` is `-1`, which means that there is no one-to-one alignment for the
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token at `other_tokens[5]`. The token `"'"` doesn't exist on its own in
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`spacy_tokens`. The same goes for `a2b[5]` and `other_tokens[5]`, i.e. `"s"`.
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- The dictionary `a2b_multi` shows that both tokens 4 and 5 of `other_tokens`
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(`"'"` and `"s"`) align to token 4 of `spacy_tokens` (`"'s"`).
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- The dictionary `b2a_multi` shows that there are no tokens in `spacy_tokens`
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that map to multiple tokens in `other_tokens`.
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<Infobox title="Important note" variant="warning">
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The current implementation of the alignment algorithm assumes that both
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tokenizations add up to the same string. For example, you'll be able to align
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`["I", "'", "m"]` and `["I", "'m"]`, which both add up to `"I'm"`, but not
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`["I", "'m"]` and `["I", "am"]`.
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</Infobox>
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## Merging and splitting {#retokenization new="2.1"}
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The [`Doc.retokenize`](/api/doc#retokenize) context manager lets you merge and
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|
|
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Block a user