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https://github.com/explosion/spaCy.git
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2e3d6b8b5a
* fix test for spancat * increase tolerance for almost equal checks * Update spacy/tests/test_models.py * Update spacy/tests/test_models.py
368 lines
12 KiB
Python
368 lines
12 KiB
Python
import pytest
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import numpy
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from numpy.testing import assert_array_equal, assert_almost_equal
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from thinc.api import get_current_ops
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from spacy import util
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from spacy.lang.en import English
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from spacy.language import Language
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from spacy.tokens.doc import SpanGroups
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from spacy.tokens import SpanGroup
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from spacy.training import Example
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from spacy.util import fix_random_seed, registry, make_tempdir
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OPS = get_current_ops()
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SPAN_KEY = "labeled_spans"
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TRAIN_DATA = [
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("Who is Shaka Khan?", {"spans": {SPAN_KEY: [(7, 17, "PERSON")]}}),
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(
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"I like London and Berlin.",
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{"spans": {SPAN_KEY: [(7, 13, "LOC"), (18, 24, "LOC")]}},
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),
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]
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TRAIN_DATA_OVERLAPPING = [
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("Who is Shaka Khan?", {"spans": {SPAN_KEY: [(7, 17, "PERSON")]}}),
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(
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"I like London and Berlin",
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{"spans": {SPAN_KEY: [(7, 13, "LOC"), (18, 24, "LOC"), (7, 24, "DOUBLE_LOC")]}},
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),
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]
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def make_examples(nlp, data=TRAIN_DATA):
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train_examples = []
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for t in data:
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eg = Example.from_dict(nlp.make_doc(t[0]), t[1])
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train_examples.append(eg)
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return train_examples
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def test_no_label():
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nlp = Language()
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nlp.add_pipe("spancat", config={"spans_key": SPAN_KEY})
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with pytest.raises(ValueError):
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nlp.initialize()
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def test_no_resize():
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nlp = Language()
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spancat = nlp.add_pipe("spancat", config={"spans_key": SPAN_KEY})
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spancat.add_label("Thing")
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spancat.add_label("Phrase")
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assert spancat.labels == ("Thing", "Phrase")
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nlp.initialize()
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assert spancat.model.get_dim("nO") == 2
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# this throws an error because the spancat can't be resized after initialization
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with pytest.raises(ValueError):
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spancat.add_label("Stuff")
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def test_implicit_labels():
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nlp = Language()
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spancat = nlp.add_pipe("spancat", config={"spans_key": SPAN_KEY})
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assert len(spancat.labels) == 0
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train_examples = make_examples(nlp)
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nlp.initialize(get_examples=lambda: train_examples)
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assert spancat.labels == ("PERSON", "LOC")
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def test_explicit_labels():
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nlp = Language()
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spancat = nlp.add_pipe("spancat", config={"spans_key": SPAN_KEY})
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assert len(spancat.labels) == 0
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spancat.add_label("PERSON")
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spancat.add_label("LOC")
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nlp.initialize()
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assert spancat.labels == ("PERSON", "LOC")
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def test_doc_gc():
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# If the Doc object is garbage collected, the spans won't be functional afterwards
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nlp = Language()
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spancat = nlp.add_pipe("spancat", config={"spans_key": SPAN_KEY})
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spancat.add_label("PERSON")
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nlp.initialize()
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texts = [
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"Just a sentence.",
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"I like London and Berlin",
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"I like Berlin",
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"I eat ham.",
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]
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all_spans = [doc.spans for doc in nlp.pipe(texts)]
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for text, spangroups in zip(texts, all_spans):
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assert isinstance(spangroups, SpanGroups)
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for key, spangroup in spangroups.items():
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assert isinstance(spangroup, SpanGroup)
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assert len(spangroup) > 0
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with pytest.raises(RuntimeError):
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span = spangroup[0]
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@pytest.mark.parametrize(
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"max_positive,nr_results", [(None, 4), (1, 2), (2, 3), (3, 4), (4, 4)]
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)
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def test_make_spangroup(max_positive, nr_results):
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fix_random_seed(0)
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nlp = Language()
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spancat = nlp.add_pipe(
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"spancat",
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config={"spans_key": SPAN_KEY, "threshold": 0.5, "max_positive": max_positive},
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)
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doc = nlp.make_doc("Greater London")
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ngram_suggester = registry.misc.get("spacy.ngram_suggester.v1")(sizes=[1, 2])
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indices = ngram_suggester([doc])[0].dataXd
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assert_array_equal(OPS.to_numpy(indices), numpy.asarray([[0, 1], [1, 2], [0, 2]]))
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labels = ["Thing", "City", "Person", "GreatCity"]
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scores = numpy.asarray(
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[[0.2, 0.4, 0.3, 0.1], [0.1, 0.6, 0.2, 0.4], [0.8, 0.7, 0.3, 0.9]], dtype="f"
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)
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spangroup = spancat._make_span_group(doc, indices, scores, labels)
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assert len(spangroup) == nr_results
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# first span is always the second token "London"
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assert spangroup[0].text == "London"
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assert spangroup[0].label_ == "City"
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assert_almost_equal(0.6, spangroup.attrs["scores"][0], 5)
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# second span depends on the number of positives that were allowed
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assert spangroup[1].text == "Greater London"
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if max_positive == 1:
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assert spangroup[1].label_ == "GreatCity"
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assert_almost_equal(0.9, spangroup.attrs["scores"][1], 5)
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else:
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assert spangroup[1].label_ == "Thing"
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assert_almost_equal(0.8, spangroup.attrs["scores"][1], 5)
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if nr_results > 2:
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assert spangroup[2].text == "Greater London"
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if max_positive == 2:
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assert spangroup[2].label_ == "GreatCity"
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assert_almost_equal(0.9, spangroup.attrs["scores"][2], 5)
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else:
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assert spangroup[2].label_ == "City"
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assert_almost_equal(0.7, spangroup.attrs["scores"][2], 5)
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assert spangroup[-1].text == "Greater London"
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assert spangroup[-1].label_ == "GreatCity"
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assert_almost_equal(0.9, spangroup.attrs["scores"][-1], 5)
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def test_ngram_suggester(en_tokenizer):
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# test different n-gram lengths
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for size in [1, 2, 3]:
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ngram_suggester = registry.misc.get("spacy.ngram_suggester.v1")(sizes=[size])
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docs = [
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en_tokenizer(text)
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for text in [
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"a",
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"a b",
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"a b c",
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"a b c d",
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"a b c d e",
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"a " * 100,
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]
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]
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ngrams = ngram_suggester(docs)
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# span sizes are correct
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for s in ngrams.data:
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assert s[1] - s[0] == size
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# spans are within docs
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offset = 0
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for i, doc in enumerate(docs):
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spans = ngrams.dataXd[offset : offset + ngrams.lengths[i]]
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spans_set = set()
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for span in spans:
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assert 0 <= span[0] < len(doc)
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assert 0 < span[1] <= len(doc)
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spans_set.add((int(span[0]), int(span[1])))
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# spans are unique
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assert spans.shape[0] == len(spans_set)
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offset += ngrams.lengths[i]
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# the number of spans is correct
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assert_array_equal(
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OPS.to_numpy(ngrams.lengths),
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[max(0, len(doc) - (size - 1)) for doc in docs],
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)
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# test 1-3-gram suggestions
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ngram_suggester = registry.misc.get("spacy.ngram_suggester.v1")(sizes=[1, 2, 3])
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docs = [
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en_tokenizer(text) for text in ["a", "a b", "a b c", "a b c d", "a b c d e"]
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]
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ngrams = ngram_suggester(docs)
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assert_array_equal(OPS.to_numpy(ngrams.lengths), [1, 3, 6, 9, 12])
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assert_array_equal(
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OPS.to_numpy(ngrams.data),
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[
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# doc 0
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[0, 1],
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# doc 1
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[0, 1],
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[1, 2],
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[0, 2],
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# doc 2
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[0, 1],
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[1, 2],
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[2, 3],
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[0, 2],
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[1, 3],
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[0, 3],
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# doc 3
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[0, 1],
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[1, 2],
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[2, 3],
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[3, 4],
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[0, 2],
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[1, 3],
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[2, 4],
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[0, 3],
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[1, 4],
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# doc 4
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[0, 1],
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[1, 2],
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[2, 3],
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[3, 4],
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[4, 5],
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[0, 2],
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[1, 3],
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[2, 4],
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[3, 5],
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[0, 3],
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[1, 4],
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[2, 5],
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],
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)
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# test some empty docs
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ngram_suggester = registry.misc.get("spacy.ngram_suggester.v1")(sizes=[1])
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docs = [en_tokenizer(text) for text in ["", "a", ""]]
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ngrams = ngram_suggester(docs)
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assert_array_equal(OPS.to_numpy(ngrams.lengths), [len(doc) for doc in docs])
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# test all empty docs
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ngram_suggester = registry.misc.get("spacy.ngram_suggester.v1")(sizes=[1])
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docs = [en_tokenizer(text) for text in ["", "", ""]]
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ngrams = ngram_suggester(docs)
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assert_array_equal(OPS.to_numpy(ngrams.lengths), [len(doc) for doc in docs])
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def test_ngram_sizes(en_tokenizer):
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# test that the range suggester works well
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size_suggester = registry.misc.get("spacy.ngram_suggester.v1")(sizes=[1, 2, 3])
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suggester_factory = registry.misc.get("spacy.ngram_range_suggester.v1")
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range_suggester = suggester_factory(min_size=1, max_size=3)
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docs = [
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en_tokenizer(text) for text in ["a", "a b", "a b c", "a b c d", "a b c d e"]
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]
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ngrams_1 = size_suggester(docs)
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ngrams_2 = range_suggester(docs)
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assert_array_equal(OPS.to_numpy(ngrams_1.lengths), [1, 3, 6, 9, 12])
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assert_array_equal(OPS.to_numpy(ngrams_1.lengths), OPS.to_numpy(ngrams_2.lengths))
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assert_array_equal(OPS.to_numpy(ngrams_1.data), OPS.to_numpy(ngrams_2.data))
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# one more variation
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suggester_factory = registry.misc.get("spacy.ngram_range_suggester.v1")
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range_suggester = suggester_factory(min_size=2, max_size=4)
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ngrams_3 = range_suggester(docs)
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assert_array_equal(OPS.to_numpy(ngrams_3.lengths), [0, 1, 3, 6, 9])
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def test_overfitting_IO():
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# Simple test to try and quickly overfit the spancat component - ensuring the ML models work correctly
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fix_random_seed(0)
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nlp = English()
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spancat = nlp.add_pipe("spancat", config={"spans_key": SPAN_KEY})
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train_examples = make_examples(nlp)
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optimizer = nlp.initialize(get_examples=lambda: train_examples)
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assert spancat.model.get_dim("nO") == 2
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assert set(spancat.labels) == {"LOC", "PERSON"}
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for i in range(50):
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losses = {}
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nlp.update(train_examples, sgd=optimizer, losses=losses)
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assert losses["spancat"] < 0.01
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# test the trained model
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test_text = "I like London and Berlin"
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doc = nlp(test_text)
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assert doc.spans[spancat.key] == doc.spans[SPAN_KEY]
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spans = doc.spans[SPAN_KEY]
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assert len(spans) == 2
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assert len(spans.attrs["scores"]) == 2
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assert min(spans.attrs["scores"]) > 0.9
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assert set([span.text for span in spans]) == {"London", "Berlin"}
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assert set([span.label_ for span in spans]) == {"LOC"}
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# Also test the results are still the same after IO
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with make_tempdir() as tmp_dir:
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nlp.to_disk(tmp_dir)
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nlp2 = util.load_model_from_path(tmp_dir)
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doc2 = nlp2(test_text)
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spans2 = doc2.spans[SPAN_KEY]
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assert len(spans2) == 2
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assert len(spans2.attrs["scores"]) == 2
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assert min(spans2.attrs["scores"]) > 0.9
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assert set([span.text for span in spans2]) == {"London", "Berlin"}
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assert set([span.label_ for span in spans2]) == {"LOC"}
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# Test scoring
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scores = nlp.evaluate(train_examples)
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assert f"spans_{SPAN_KEY}_f" in scores
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assert scores[f"spans_{SPAN_KEY}_p"] == 1.0
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assert scores[f"spans_{SPAN_KEY}_r"] == 1.0
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assert scores[f"spans_{SPAN_KEY}_f"] == 1.0
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# also test that the spancat works for just a single entity in a sentence
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doc = nlp("London")
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assert len(doc.spans[spancat.key]) == 1
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def test_overfitting_IO_overlapping():
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# Test for overfitting on overlapping entities
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fix_random_seed(0)
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nlp = English()
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spancat = nlp.add_pipe("spancat", config={"spans_key": SPAN_KEY})
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train_examples = make_examples(nlp, data=TRAIN_DATA_OVERLAPPING)
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optimizer = nlp.initialize(get_examples=lambda: train_examples)
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assert spancat.model.get_dim("nO") == 3
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assert set(spancat.labels) == {"PERSON", "LOC", "DOUBLE_LOC"}
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for i in range(50):
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losses = {}
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nlp.update(train_examples, sgd=optimizer, losses=losses)
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assert losses["spancat"] < 0.01
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# test the trained model
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test_text = "I like London and Berlin"
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doc = nlp(test_text)
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spans = doc.spans[SPAN_KEY]
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assert len(spans) == 3
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assert len(spans.attrs["scores"]) == 3
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assert min(spans.attrs["scores"]) > 0.9
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assert set([span.text for span in spans]) == {
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"London",
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"Berlin",
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"London and Berlin",
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}
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assert set([span.label_ for span in spans]) == {"LOC", "DOUBLE_LOC"}
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# Also test the results are still the same after IO
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with make_tempdir() as tmp_dir:
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nlp.to_disk(tmp_dir)
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nlp2 = util.load_model_from_path(tmp_dir)
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doc2 = nlp2(test_text)
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spans2 = doc2.spans[SPAN_KEY]
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assert len(spans2) == 3
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assert len(spans2.attrs["scores"]) == 3
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assert min(spans2.attrs["scores"]) > 0.9
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assert set([span.text for span in spans2]) == {
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"London",
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"Berlin",
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"London and Berlin",
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}
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assert set([span.label_ for span in spans2]) == {"LOC", "DOUBLE_LOC"}
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