spaCy/website/docs/api/phrasematcher.md

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PhraseMatcher Match sequences of tokens, based on documents class spacy/matcher/phrasematcher.pyx 2

The PhraseMatcher lets you efficiently match large terminology lists. While the Matcher lets you match sequences based on lists of token descriptions, the PhraseMatcher accepts match patterns in the form of Doc objects.

PhraseMatcher.__init__

Create the rule-based PhraseMatcher. Setting a different attr to match on will change the token attributes that will be compared to determine a match. By default, the incoming Doc is checked for sequences of tokens with the same ORTH value, i.e. the verbatim token text. Matching on the attribute LOWER will result in case-insensitive matching, since only the lowercase token texts are compared. In theory, it's also possible to match on sequences of the same part-of-speech tags or dependency labels.

If validate=True is set, additional validation is performed when pattern are added. At the moment, it will check whether a Doc has attributes assigned that aren't necessary to produce the matches (for example, part-of-speech tags if the PhraseMatcher matches on the token text). Since this can often lead to significantly worse performance when creating the pattern, a UserWarning will be shown.

Example

from spacy.matcher import PhraseMatcher
matcher = PhraseMatcher(nlp.vocab)
Name Type Description
vocab Vocab The vocabulary object, which must be shared with the documents the matcher will operate on.
attr 2.1 int / unicode The token attribute to match on. Defaults to ORTH, i.e. the verbatim token text.
validate 2.1 bool Validate patterns added to the matcher.
RETURNS PhraseMatcher The newly constructed object.

As of v2.1, the PhraseMatcher doesn't have a phrase length limit anymore, so the max_length argument is now deprecated.

PhraseMatcher.__call__

Find all token sequences matching the supplied patterns on the Doc.

Example

from spacy.matcher import PhraseMatcher

matcher = PhraseMatcher(nlp.vocab)
matcher.add("OBAMA", None, nlp(u"Barack Obama"))
doc = nlp(u"Barack Obama lifts America one last time in emotional farewell")
matches = matcher(doc)
Name Type Description
doc Doc The document to match over.
RETURNS list A list of (match_id, start, end) tuples, describing the matches. A match tuple describes a span doc[start:end]. The match_id is the ID of the added match pattern.

PhraseMatcher.pipe

Match a stream of documents, yielding them in turn.

Example

  from spacy.matcher import PhraseMatcher
  matcher = PhraseMatcher(nlp.vocab)
  for doc in matcher.pipe(texts, batch_size=50):
      pass
Name Type Description
docs iterable A stream of documents.
batch_size int The number of documents to accumulate into a working set.
YIELDS Doc Documents, in order.

PhraseMatcher.__len__

Get the number of rules added to the matcher. Note that this only returns the number of rules (identical with the number of IDs), not the number of individual patterns.

Example

  matcher = PhraseMatcher(nlp.vocab)
  assert len(matcher) == 0
  matcher.add("OBAMA", None, nlp(u"Barack Obama"))
  assert len(matcher) == 1
Name Type Description
RETURNS int The number of rules.

PhraseMatcher.__contains__

Check whether the matcher contains rules for a match ID.

Example

  matcher = PhraseMatcher(nlp.vocab)
  assert "OBAMA" not in matcher
  matcher.add("OBAMA", None, nlp(u"Barack Obama"))
  assert "OBAMA" in matcher
Name Type Description
key unicode The match ID.
RETURNS bool Whether the matcher contains rules for this match ID.

PhraseMatcher.add

Add a rule to the matcher, consisting of an ID key, one or more patterns, and a callback function to act on the matches. The callback function will receive the arguments matcher, doc, i and matches. If a pattern already exists for the given ID, the patterns will be extended. An on_match callback will be overwritten.

Example

  def on_match(matcher, doc, id, matches):
      print('Matched!', matches)

  matcher = PhraseMatcher(nlp.vocab)
  matcher.add("OBAMA", on_match, nlp(u"Barack Obama"))
  matcher.add("HEALTH", on_match, nlp(u"health care reform"),
                                  nlp(u"healthcare reform"))
  doc = nlp(u"Barack Obama urges Congress to find courage to defend his healthcare reforms")
  matches = matcher(doc)
Name Type Description
match_id unicode An ID for the thing you're matching.
on_match callable or None Callback function to act on matches. Takes the arguments matcher, doc, i and matches.
*docs list Doc objects of the phrases to match.