mirror of https://github.com/explosion/spaCy.git
207 lines
6.1 KiB
Python
207 lines
6.1 KiB
Python
import pytest
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import re
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from spacy.lang.en import English
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from spacy.matcher import Matcher
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from spacy.tokens import Doc, Span
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pattern1 = [{"ORTH": "A"}, {"ORTH": "A", "OP": "*"}]
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pattern2 = [{"ORTH": "A", "OP": "*"}, {"ORTH": "A"}]
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pattern3 = [{"ORTH": "A"}, {"ORTH": "A"}]
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pattern4 = [{"ORTH": "B"}, {"ORTH": "A", "OP": "*"}, {"ORTH": "B"}]
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pattern5 = [{"ORTH": "B", "OP": "*"}, {"ORTH": "A", "OP": "*"}, {"ORTH": "B"}]
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re_pattern1 = "AA*"
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re_pattern2 = "A*A"
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re_pattern3 = "AA"
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re_pattern4 = "BA*B"
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re_pattern5 = "B*A*B"
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longest1 = "A A A A A"
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longest2 = "A A A A A"
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longest3 = "A A"
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longest4 = "B A A A A A B" # "FIRST" would be "B B"
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longest5 = "B B A A A A A B"
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@pytest.fixture
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def text():
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return "(BBAAAAAB)."
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@pytest.fixture
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def doc(en_tokenizer, text):
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doc = en_tokenizer(" ".join(text))
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return doc
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@pytest.mark.parametrize(
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"pattern,re_pattern",
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[
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(pattern1, re_pattern1),
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(pattern2, re_pattern2),
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(pattern3, re_pattern3),
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(pattern4, re_pattern4),
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(pattern5, re_pattern5),
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],
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)
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def test_greedy_matching_first(doc, text, pattern, re_pattern):
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"""Test that the greedy matching behavior "FIRST" is consistent with
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other re implementations."""
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matcher = Matcher(doc.vocab)
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matcher.add(re_pattern, [pattern], greedy="FIRST")
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matches = matcher(doc)
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re_matches = [m.span() for m in re.finditer(re_pattern, text)]
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for (key, m_s, m_e), (re_s, re_e) in zip(matches, re_matches):
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# matching the string, not the exact position
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assert doc[m_s:m_e].text == doc[re_s:re_e].text
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@pytest.mark.parametrize(
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"pattern,longest",
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[
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(pattern1, longest1),
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(pattern2, longest2),
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(pattern3, longest3),
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(pattern4, longest4),
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(pattern5, longest5),
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],
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)
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def test_greedy_matching_longest(doc, text, pattern, longest):
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"""Test the "LONGEST" greedy matching behavior"""
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matcher = Matcher(doc.vocab)
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matcher.add("RULE", [pattern], greedy="LONGEST")
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matches = matcher(doc)
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for (key, s, e) in matches:
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assert doc[s:e].text == longest
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def test_greedy_matching_longest_first(en_tokenizer):
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"""Test that "LONGEST" matching prefers the first of two equally long matches"""
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doc = en_tokenizer(" ".join("CCC"))
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matcher = Matcher(doc.vocab)
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pattern = [{"ORTH": "C"}, {"ORTH": "C"}]
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matcher.add("RULE", [pattern], greedy="LONGEST")
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matches = matcher(doc)
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# out of 0-2 and 1-3, the first should be picked
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assert len(matches) == 1
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assert matches[0][1] == 0
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assert matches[0][2] == 2
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def test_invalid_greediness(doc, text):
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matcher = Matcher(doc.vocab)
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with pytest.raises(ValueError):
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matcher.add("RULE", [pattern1], greedy="GREEDY")
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@pytest.mark.parametrize(
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"pattern,re_pattern",
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[
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(pattern1, re_pattern1),
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(pattern2, re_pattern2),
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(pattern3, re_pattern3),
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(pattern4, re_pattern4),
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(pattern5, re_pattern5),
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],
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)
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def test_match_consuming(doc, text, pattern, re_pattern):
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"""Test that matcher.__call__ consumes tokens on a match similar to
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re.findall."""
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matcher = Matcher(doc.vocab)
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matcher.add(re_pattern, [pattern], greedy="FIRST")
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matches = matcher(doc)
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re_matches = [m.span() for m in re.finditer(re_pattern, text)]
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assert len(matches) == len(re_matches)
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def test_operator_combos(en_vocab):
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cases = [
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("aaab", "a a a b", True),
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("aaab", "a+ b", True),
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("aaab", "a+ a+ b", True),
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("aaab", "a+ a+ a b", True),
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("aaab", "a+ a+ a+ b", True),
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("aaab", "a+ a a b", True),
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("aaab", "a+ a a", True),
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("aaab", "a+", True),
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("aaa", "a+ b", False),
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("aaa", "a+ a+ b", False),
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("aaa", "a+ a+ a+ b", False),
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("aaa", "a+ a b", False),
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("aaa", "a+ a a b", False),
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("aaab", "a+ a a", True),
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("aaab", "a+", True),
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("aaab", "a+ a b", True),
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]
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for string, pattern_str, result in cases:
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matcher = Matcher(en_vocab)
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doc = Doc(matcher.vocab, words=list(string))
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pattern = []
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for part in pattern_str.split():
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if part.endswith("+"):
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pattern.append({"ORTH": part[0], "OP": "+"})
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else:
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pattern.append({"ORTH": part})
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matcher.add("PATTERN", [pattern])
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matches = matcher(doc)
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if result:
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assert matches, (string, pattern_str)
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else:
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assert not matches, (string, pattern_str)
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def test_matcher_end_zero_plus(en_vocab):
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"""Test matcher works when patterns end with * operator. (issue 1450)"""
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matcher = Matcher(en_vocab)
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pattern = [{"ORTH": "a"}, {"ORTH": "b", "OP": "*"}]
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matcher.add("TSTEND", [pattern])
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nlp = lambda string: Doc(matcher.vocab, words=string.split())
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assert len(matcher(nlp("a"))) == 1
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assert len(matcher(nlp("a b"))) == 2
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assert len(matcher(nlp("a c"))) == 1
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assert len(matcher(nlp("a b c"))) == 2
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assert len(matcher(nlp("a b b c"))) == 3
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assert len(matcher(nlp("a b b"))) == 3
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def test_matcher_sets_return_correct_tokens(en_vocab):
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matcher = Matcher(en_vocab)
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patterns = [
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[{"LOWER": {"IN": ["zero"]}}],
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[{"LOWER": {"IN": ["one"]}}],
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[{"LOWER": {"IN": ["two"]}}],
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]
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matcher.add("TEST", patterns)
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doc = Doc(en_vocab, words="zero one two three".split())
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matches = matcher(doc)
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texts = [Span(doc, s, e, label=L).text for L, s, e in matches]
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assert texts == ["zero", "one", "two"]
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def test_matcher_remove():
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nlp = English()
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matcher = Matcher(nlp.vocab)
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text = "This is a test case."
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pattern = [{"ORTH": "test"}, {"OP": "?"}]
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assert len(matcher) == 0
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matcher.add("Rule", [pattern])
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assert "Rule" in matcher
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# should give two matches
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results1 = matcher(nlp(text))
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assert len(results1) == 2
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# removing once should work
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matcher.remove("Rule")
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# should not return any maches anymore
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results2 = matcher(nlp(text))
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assert len(results2) == 0
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# removing again should throw an error
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with pytest.raises(ValueError):
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matcher.remove("Rule")
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