mirror of
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282 lines
9.2 KiB
Python
282 lines
9.2 KiB
Python
from spacy.cli.evaluate import print_textcats_auc_per_cat, print_prf_per_type
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from spacy.lang.en import English
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from spacy.training import Example
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from spacy.tokens.doc import Doc
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from spacy.vocab import Vocab
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from spacy.kb import KnowledgeBase
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from spacy.pipeline._parser_internals.arc_eager import ArcEager
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from spacy.util import load_config_from_str, load_config
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from spacy.cli.init_config import fill_config
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from thinc.api import Config
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from wasabi import msg
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from ..util import make_tempdir
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def test_issue7019():
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scores = {"LABEL_A": 0.39829102, "LABEL_B": 0.938298329382, "LABEL_C": None}
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print_textcats_auc_per_cat(msg, scores)
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scores = {
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"LABEL_A": {"p": 0.3420302, "r": 0.3929020, "f": 0.49823928932},
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"LABEL_B": {"p": None, "r": None, "f": None},
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}
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print_prf_per_type(msg, scores, name="foo", type="bar")
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CONFIG_7029 = """
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[nlp]
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lang = "en"
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pipeline = ["tok2vec", "tagger"]
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[components]
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[components.tok2vec]
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factory = "tok2vec"
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[components.tok2vec.model]
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@architectures = "spacy.Tok2Vec.v1"
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[components.tok2vec.model.embed]
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@architectures = "spacy.MultiHashEmbed.v1"
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width = ${components.tok2vec.model.encode:width}
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attrs = ["NORM","PREFIX","SUFFIX","SHAPE"]
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rows = [5000,2500,2500,2500]
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include_static_vectors = false
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[components.tok2vec.model.encode]
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@architectures = "spacy.MaxoutWindowEncoder.v1"
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width = 96
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depth = 4
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window_size = 1
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maxout_pieces = 3
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[components.tagger]
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factory = "tagger"
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[components.tagger.model]
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@architectures = "spacy.Tagger.v1"
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nO = null
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[components.tagger.model.tok2vec]
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@architectures = "spacy.Tok2VecListener.v1"
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width = ${components.tok2vec.model.encode:width}
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upstream = "*"
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"""
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def test_issue7029():
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"""Test that an empty document doesn't mess up an entire batch."""
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TRAIN_DATA = [
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("I like green eggs", {"tags": ["N", "V", "J", "N"]}),
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("Eat blue ham", {"tags": ["V", "J", "N"]}),
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]
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nlp = English.from_config(load_config_from_str(CONFIG_7029))
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train_examples = []
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for t in TRAIN_DATA:
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train_examples.append(Example.from_dict(nlp.make_doc(t[0]), t[1]))
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optimizer = nlp.initialize(get_examples=lambda: train_examples)
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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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texts = ["first", "second", "third", "fourth", "and", "then", "some", ""]
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docs1 = list(nlp.pipe(texts, batch_size=1))
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docs2 = list(nlp.pipe(texts, batch_size=4))
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assert [doc[0].tag_ for doc in docs1[:-1]] == [doc[0].tag_ for doc in docs2[:-1]]
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def test_issue7055():
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"""Test that fill-config doesn't turn sourced components into factories."""
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source_cfg = {
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"nlp": {"lang": "en", "pipeline": ["tok2vec", "tagger"]},
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"components": {
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"tok2vec": {"factory": "tok2vec"},
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"tagger": {"factory": "tagger"},
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},
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}
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source_nlp = English.from_config(source_cfg)
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with make_tempdir() as dir_path:
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# We need to create a loadable source pipeline
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source_path = dir_path / "test_model"
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source_nlp.to_disk(source_path)
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base_cfg = {
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"nlp": {"lang": "en", "pipeline": ["tok2vec", "tagger", "ner"]},
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"components": {
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"tok2vec": {"source": str(source_path)},
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"tagger": {"source": str(source_path)},
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"ner": {"factory": "ner"},
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},
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}
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base_cfg = Config(base_cfg)
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base_path = dir_path / "base.cfg"
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base_cfg.to_disk(base_path)
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output_path = dir_path / "config.cfg"
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fill_config(output_path, base_path, silent=True)
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filled_cfg = load_config(output_path)
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assert filled_cfg["components"]["tok2vec"]["source"] == str(source_path)
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assert filled_cfg["components"]["tagger"]["source"] == str(source_path)
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assert filled_cfg["components"]["ner"]["factory"] == "ner"
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assert "model" in filled_cfg["components"]["ner"]
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def test_issue7056():
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"""Test that the Unshift transition works properly, and doesn't cause
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sentence segmentation errors."""
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vocab = Vocab()
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ae = ArcEager(
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vocab.strings, ArcEager.get_actions(left_labels=["amod"], right_labels=["pobj"])
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)
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doc = Doc(vocab, words="Severe pain , after trauma".split())
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state = ae.init_batch([doc])[0]
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ae.apply_transition(state, "S")
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ae.apply_transition(state, "L-amod")
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ae.apply_transition(state, "S")
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ae.apply_transition(state, "S")
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ae.apply_transition(state, "S")
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ae.apply_transition(state, "R-pobj")
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ae.apply_transition(state, "D")
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ae.apply_transition(state, "D")
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ae.apply_transition(state, "D")
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assert not state.eol()
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def test_partial_links():
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# Test that having some entities on the doc without gold links, doesn't crash
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TRAIN_DATA = [
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(
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"Russ Cochran his reprints include EC Comics.",
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{
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"links": {(0, 12): {"Q2146908": 1.0}},
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"entities": [(0, 12, "PERSON")],
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"sent_starts": [1, -1, 0, 0, 0, 0, 0, 0],
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},
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)
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]
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nlp = English()
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vector_length = 3
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train_examples = []
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for text, annotation in TRAIN_DATA:
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doc = nlp(text)
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train_examples.append(Example.from_dict(doc, annotation))
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def create_kb(vocab):
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# create artificial KB
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mykb = KnowledgeBase(vocab, entity_vector_length=vector_length)
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mykb.add_entity(entity="Q2146908", freq=12, entity_vector=[6, -4, 3])
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mykb.add_alias("Russ Cochran", ["Q2146908"], [0.9])
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return mykb
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# Create and train the Entity Linker
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entity_linker = nlp.add_pipe("entity_linker", last=True)
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entity_linker.set_kb(create_kb)
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optimizer = nlp.initialize(get_examples=lambda: train_examples)
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for i in range(2):
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losses = {}
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nlp.update(train_examples, sgd=optimizer, losses=losses)
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# adding additional components that are required for the entity_linker
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nlp.add_pipe("sentencizer", first=True)
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patterns = [
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{"label": "PERSON", "pattern": [{"LOWER": "russ"}, {"LOWER": "cochran"}]},
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{"label": "ORG", "pattern": [{"LOWER": "ec"}, {"LOWER": "comics"}]},
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]
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ruler = nlp.add_pipe("entity_ruler", before="entity_linker")
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ruler.add_patterns(patterns)
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# this will run the pipeline on the examples and shouldn't crash
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results = nlp.evaluate(train_examples)
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assert "PERSON" in results["ents_per_type"]
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assert "PERSON" in results["nel_f_per_type"]
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assert "ORG" in results["ents_per_type"]
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assert "ORG" not in results["nel_f_per_type"]
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def test_issue7065():
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text = "Kathleen Battle sang in Mahler 's Symphony No. 8 at the Cincinnati Symphony Orchestra 's May Festival."
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nlp = English()
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nlp.add_pipe("sentencizer")
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ruler = nlp.add_pipe("entity_ruler")
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patterns = [
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{
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"label": "THING",
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"pattern": [
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{"LOWER": "symphony"},
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{"LOWER": "no"},
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{"LOWER": "."},
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{"LOWER": "8"},
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],
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}
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]
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ruler.add_patterns(patterns)
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doc = nlp(text)
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sentences = [s for s in doc.sents]
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assert len(sentences) == 2
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sent0 = sentences[0]
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ent = doc.ents[0]
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assert ent.start < sent0.end < ent.end
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assert sentences.index(ent.sent) == 0
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def test_issue7065_b():
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# Test that the NEL doesn't crash when an entity crosses a sentence boundary
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nlp = English()
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vector_length = 3
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nlp.add_pipe("sentencizer")
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text = "Mahler 's Symphony No. 8 was beautiful."
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entities = [(0, 6, "PERSON"), (10, 24, "WORK")]
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links = {
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(0, 6): {"Q7304": 1.0, "Q270853": 0.0},
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(10, 24): {"Q7304": 0.0, "Q270853": 1.0},
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}
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sent_starts = [1, -1, 0, 0, 0, 0, 0, 0, 0]
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doc = nlp(text)
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example = Example.from_dict(
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doc, {"entities": entities, "links": links, "sent_starts": sent_starts}
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)
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train_examples = [example]
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def create_kb(vocab):
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# create artificial KB
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mykb = KnowledgeBase(vocab, entity_vector_length=vector_length)
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mykb.add_entity(entity="Q270853", freq=12, entity_vector=[9, 1, -7])
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mykb.add_alias(
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alias="No. 8",
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entities=["Q270853"],
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probabilities=[1.0],
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)
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mykb.add_entity(entity="Q7304", freq=12, entity_vector=[6, -4, 3])
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mykb.add_alias(
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alias="Mahler",
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entities=["Q7304"],
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probabilities=[1.0],
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)
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return mykb
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# Create the Entity Linker component and add it to the pipeline
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entity_linker = nlp.add_pipe("entity_linker", last=True)
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entity_linker.set_kb(create_kb)
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# train the NEL pipe
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optimizer = nlp.initialize(get_examples=lambda: train_examples)
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for i in range(2):
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losses = {}
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nlp.update(train_examples, sgd=optimizer, losses=losses)
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# Add a custom rule-based component to mimick NER
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patterns = [
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{"label": "PERSON", "pattern": [{"LOWER": "mahler"}]},
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{
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"label": "WORK",
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"pattern": [
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{"LOWER": "symphony"},
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{"LOWER": "no"},
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{"LOWER": "."},
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{"LOWER": "8"},
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],
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},
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]
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ruler = nlp.add_pipe("entity_ruler", before="entity_linker")
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ruler.add_patterns(patterns)
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# test the trained model - this should not throw E148
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doc = nlp(text)
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assert doc
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