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706 lines
29 KiB
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706 lines
29 KiB
Plaintext
//- 💫 DOCS > USAGE > RULE-BASED MATCHING
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p
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| spaCy features a rule-matching engine, the #[+api("matcher") #[code Matcher]],
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| that operates over tokens, similar
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| to regular expressions. The rules can refer to token annotations (e.g.
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| the token #[code text] or #[code tag_], and flags (e.g. #[code IS_PUNCT]).
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| The rule matcher also lets you pass in a custom callback
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| to act on matches – for example, to merge entities and apply custom labels.
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| You can also associate patterns with entity IDs, to allow some basic
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| entity linking or disambiguation. To match large terminology lists,
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| you can use the #[+api("phrasematcher") #[code PhraseMatcher]], which
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| accepts #[code Doc] objects as match patterns.
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+h(3, "adding-patterns") Adding patterns
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p
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| Let's say we want to enable spaCy to find a combination of three tokens:
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+list("numbers")
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+item
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| A token whose #[strong lowercase form matches "hello"], e.g. "Hello"
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| or "HELLO".
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+item
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| A token whose #[strong #[code is_punct] flag is set to #[code True]],
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| i.e. any punctuation.
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+item
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| A token whose #[strong lowercase form matches "world"], e.g. "World"
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| or "WORLD".
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+code.
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[{'LOWER': 'hello'}, {'IS_PUNCT': True}, {'LOWER': 'world'}]
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p
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| First, we initialise the #[code Matcher] with a vocab. The matcher must
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| always share the same vocab with the documents it will operate on. We
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| can now call #[+api("matcher#add") #[code matcher.add()]] with an ID and
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| our custom pattern. The second argument lets you pass in an optional
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| callback function to invoke on a successful match. For now, we set it
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| to #[code None].
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+code-exec.
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import spacy
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from spacy.matcher import Matcher
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nlp = spacy.load('en_core_web_sm')
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matcher = Matcher(nlp.vocab)
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# add match ID "HelloWorld" with no callback and one pattern
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pattern = [{'LOWER': 'hello'}, {'IS_PUNCT': True}, {'LOWER': 'world'}]
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matcher.add('HelloWorld', None, pattern)
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doc = nlp(u'Hello, world! Hello world!')
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matches = matcher(doc)
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for match_id, start, end in matches:
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string_id = nlp.vocab.strings[match_id] # get string representation
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span = doc[start:end] # the matched span
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print(match_id, string_id, start, end, span.text)
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p
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| The matcher returns a list of #[code (match_id, start, end)] tuples – in
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| this case, #[code [('15578876784678163569', 0, 2)]], which maps to the
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| span #[code doc[0:2]] of our original document. The #[code match_id]
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| is the #[+a("/usage/spacy-101#vocab") hash value] of the string ID
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| "HelloWorld". To get the string value, you can look up the ID
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| in the #[+api("stringstore") #[code StringStore]].
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+code.
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for match_id, start, end in matches:
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string_id = nlp.vocab.strings[match_id] # 'HelloWorld'
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span = doc[start:end] # the matched span
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p
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| Optionally, we could also choose to add more than one pattern, for
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| example to also match sequences without punctuation between "hello" and
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| "world":
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+code.
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matcher.add('HelloWorld', None,
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[{'LOWER': 'hello'}, {'IS_PUNCT': True}, {'LOWER': 'world'}],
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[{'LOWER': 'hello'}, {'LOWER': 'world'}])
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p
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| By default, the matcher will only return the matches and
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| #[strong not do anything else], like merge entities or assign labels.
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| This is all up to you and can be defined individually for each pattern,
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| by passing in a callback function as the #[code on_match] argument on
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| #[code add()]. This is useful, because it lets you write entirely custom
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| and #[strong pattern-specific logic]. For example, you might want to
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| merge #[em some] patterns into one token, while adding entity labels for
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| other pattern types. You shouldn't have to create different matchers for
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| each of those processes.
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+h(4, "adding-patterns-attributes") Available token attributes
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p
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| The available token pattern keys are uppercase versions of the
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| #[+api("token#attributes") #[code Token] attributes]. The most relevant
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| ones for rule-based matching are:
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+table(["Attribute", "Description"])
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+row
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+cell #[code ORTH]
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+cell The exact verbatim text of a token.
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+row
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+cell.u-nowrap #[code LOWER]
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+cell The lowercase form of the token text.
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+row
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+cell #[code LENGTH]
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+cell The length of the token text.
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+row
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+cell.u-nowrap #[code IS_ALPHA], #[code IS_ASCII], #[code IS_DIGIT]
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+cell
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| Token text consists of alphanumeric characters, ASCII characters,
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| digits.
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+row
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+cell.u-nowrap #[code IS_LOWER], #[code IS_UPPER], #[code IS_TITLE]
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+cell Token text is in lowercase, uppercase, titlecase.
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+row
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+cell.u-nowrap #[code IS_PUNCT], #[code IS_SPACE], #[code IS_STOP]
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+cell Token is punctuation, whitespace, stop word.
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+row
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+cell.u-nowrap #[code LIKE_NUM], #[code LIKE_URL], #[code LIKE_EMAIL]
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+cell Token text resembles a number, URL, email.
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+row
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+cell.u-nowrap
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| #[code POS], #[code TAG], #[code DEP], #[code LEMMA],
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| #[code SHAPE]
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+cell
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| The token's simple and extended part-of-speech tag, dependency
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| label, lemma, shape.
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+row
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+cell.u-nowrap #[code ENT_TYPE]
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+cell The token's entity label.
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+h(4, "adding-patterns-wildcard") Using wildcard token patterns
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+tag-new(2)
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p
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| While the token attributes offer many options to write highly specific
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| patterns, you can also use an empty dictionary, #[code {}] as a wildcard
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| representing #[strong any token]. This is useful if you know the context
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| of what you're trying to match, but very little about the specific token
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| and its characters. For example, let's say you're trying to extract
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| people's user names from your data. All you know is that they are listed
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| as "User name: {username}". The name itself may contain any character,
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| but no whitespace – so you'll know it will be handled as one token.
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+code.
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[{'ORTH': 'User'}, {'ORTH': 'name'}, {'ORTH': ':'}, {}]
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+h(4, "quantifiers") Using operators and quantifiers
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p
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| The matcher also lets you use quantifiers, specified as the #[code 'OP']
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| key. Quantifiers let you define sequences of tokens to be mached, e.g.
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| one or more punctuation marks, or specify optional tokens. Note that there
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| are no nested or scoped quantifiers – instead, you can build those
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| behaviours with #[code on_match] callbacks.
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+table([ "OP", "Description"])
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+row
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+cell #[code !]
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+cell Negate the pattern, by requiring it to match exactly 0 times.
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+row
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+cell #[code ?]
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+cell Make the pattern optional, by allowing it to match 0 or 1 times.
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+row
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+cell #[code +]
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+cell Require the pattern to match 1 or more times.
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+row
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+cell #[code *]
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+cell Allow the pattern to match zero or more times.
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p
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| In versions before v2.1.0, the semantics of the #[code +] and #[code *] operators
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| behave inconsistently. They were usually interpreted
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| "greedily", i.e. longer matches are returned where possible. However, if
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| you specify two #[code +] and #[code *] patterns in a row and their
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| matches overlap, the first operator will behave non-greedily. This quirk
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| in the semantics is corrected in spaCy v2.1.0.
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+h(3, "adding-phrase-patterns") Adding phrase patterns
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p
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| If you need to match large terminology lists, you can also use the
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| #[+api("phrasematcher") #[code PhraseMatcher]] and create
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| #[+api("doc") #[code Doc]] objects instead of token patterns, which is
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| much more efficient overall. The #[code Doc] patterns can contain single
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| or multiple tokens.
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+code-exec.
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import spacy
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from spacy.matcher import PhraseMatcher
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nlp = spacy.load('en_core_web_sm')
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matcher = PhraseMatcher(nlp.vocab)
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terminology_list = ['Barack Obama', 'Angela Merkel', 'Washington, D.C.']
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patterns = [nlp(text) for text in terminology_list]
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matcher.add('TerminologyList', None, *patterns)
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doc = nlp(u"German Chancellor Angela Merkel and US President Barack Obama "
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u"converse in the Oval Office inside the White House in Washington, D.C.")
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matches = matcher(doc)
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for match_id, start, end in matches:
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span = doc[start:end]
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print(span.text)
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p
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| Since spaCy is used for processing both the patterns and the text to be
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| matched, you won't have to worry about specific tokenization – for
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| example, you can simply pass in #[code nlp(u"Washington, D.C.")] and
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| won't have to write a complex token pattern covering the exact
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| tokenization of the term.
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+h(3, "on_match") Adding #[code on_match] rules
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p
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| To move on to a more realistic example, let's say you're working with a
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| large corpus of blog articles, and you want to match all mentions of
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| "Google I/O" (which spaCy tokenizes as #[code ['Google', 'I', '/', 'O']]).
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| To be safe, you only match on the uppercase versions, in case someone has
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| written it as "Google i/o". You also add a second pattern with an added
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| #[code {IS_DIGIT: True}] token – this will make sure you also match on
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| "Google I/O 2017". If your pattern matches, spaCy should execute your
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| custom callback function #[code add_event_ent].
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+code-exec.
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import spacy
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from spacy.matcher import Matcher
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nlp = spacy.load('en_core_web_sm')
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matcher = Matcher(nlp.vocab)
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# Get the ID of the 'EVENT' entity type. This is required to set an entity.
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EVENT = nlp.vocab.strings['EVENT']
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def add_event_ent(matcher, doc, i, matches):
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# Get the current match and create tuple of entity label, start and end.
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# Append entity to the doc's entity. (Don't overwrite doc.ents!)
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match_id, start, end = matches[i]
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entity = (EVENT, start, end)
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doc.ents += (entity,)
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print(doc[start:end].text, entity)
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matcher.add('GoogleIO', add_event_ent,
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[{'ORTH': 'Google'}, {'ORTH': 'I'}, {'ORTH': '/'}, {'ORTH': 'O'}],
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[{'ORTH': 'Google'}, {'ORTH': 'I'}, {'ORTH': '/'}, {'ORTH': 'O'}, {'IS_DIGIT': True}])
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doc = nlp(u"This is a text about Google I/O 2015.")
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matches = matcher(doc)
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+aside("Tip: Visualizing matches")
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| When working with entities, you can use #[+api("top-level#displacy") displaCy]
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| to quickly generate a NER visualization from your updated #[code Doc],
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| which can be exported as an HTML file:
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+code.o-no-block.
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from spacy import displacy
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html = displacy.render(doc, style='ent', page=True,
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options={'ents': ['EVENT']})
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| For more info and examples, see the usage guide on
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| #[+a("/usage/visualizers") visualizing spaCy].
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p
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| We can now call the matcher on our documents. The patterns will be
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| matched in the order they occur in the text. The matcher will then
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| iterate over the matches, look up the callback for the match ID
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| that was matched, and invoke it.
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+code.
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doc = nlp(YOUR_TEXT_HERE)
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matcher(doc)
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p
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| When the callback is invoked, it is
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| passed four arguments: the matcher itself, the document, the position of
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| the current match, and the total list of matches. This allows you to
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| write callbacks that consider the entire set of matched phrases, so that
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| you can resolve overlaps and other conflicts in whatever way you prefer.
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+table(["Argument", "Type", "Description"])
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+row
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+cell #[code matcher]
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+cell #[code Matcher]
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+cell The matcher instance.
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+row
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+cell #[code doc]
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+cell #[code Doc]
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+cell The document the matcher was used on.
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+row
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+cell #[code i]
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+cell int
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+cell Index of the current match (#[code matches[i]]).
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+row
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+cell #[code matches]
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+cell list
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+cell
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| A list of #[code (match_id, start, end)] tuples, describing the
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| matches. A match tuple describes a span #[code doc[start:end]].
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+h(3, "matcher-pipeline") Using custom pipeline components
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p
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| Let's say your data also contains some annoying pre-processing artefacts,
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| like leftover HTML line breaks (e.g. #[code <br>] or
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| #[code <BR/>]). To make your text easier to analyse, you want to
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| merge those into one token and flag them, to make sure you
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| can ignore them later. Ideally, this should all be done automatically
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| as you process the text. You can achieve this by adding a
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| #[+a("/usage/processing-pipelines#custom-components") custom pipeline component]
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| that's called on each #[code Doc] object, merges the leftover HTML spans
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| and sets an attribute #[code bad_html] on the token.
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+code-exec.
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import spacy
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from spacy.matcher import Matcher
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from spacy.tokens import Token
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# we're using a class because the component needs to be initialised with
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# the shared vocab via the nlp object
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class BadHTMLMerger(object):
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def __init__(self, nlp):
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# register a new token extension to flag bad HTML
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Token.set_extension('bad_html', default=False)
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self.matcher = Matcher(nlp.vocab)
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self.matcher.add('BAD_HTML', None,
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[{'ORTH': '<'}, {'LOWER': 'br'}, {'ORTH': '>'}],
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[{'ORTH': '<'}, {'LOWER': 'br/'}, {'ORTH': '>'}])
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def __call__(self, doc):
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# this method is invoked when the component is called on a Doc
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matches = self.matcher(doc)
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spans = [] # collect the matched spans here
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for match_id, start, end in matches:
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spans.append(doc[start:end])
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for span in spans:
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span.merge() # merge
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for token in span:
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token._.bad_html = True # mark token as bad HTML
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return doc
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nlp = spacy.load('en_core_web_sm')
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html_merger = BadHTMLMerger(nlp)
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nlp.add_pipe(html_merger, last=True) # add component to the pipeline
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doc = nlp(u"Hello<br>world! <br/> This is a test.")
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for token in doc:
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print(token.text, token._.bad_html)
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p
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| Instead of hard-coding the patterns into the component, you could also
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| make it take a path to a JSON file containing the patterns. This lets
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| you reuse the component with different patterns, depending on your
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| application:
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+code.
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html_merger = BadHTMLMerger(nlp, path='/path/to/patterns.json')
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+infobox
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| For more details and examples of how to
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| #[strong create custom pipeline components] and
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| #[strong extension attributes], see the
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| #[+a("/usage/processing-pipelines") usage guide].
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+h(3, "regex") Using regular expressions
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p
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| In some cases, only matching tokens and token attributes isn't enough –
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| for example, you might want to match different spellings of a word,
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| without having to add a new pattern for each spelling. A simple solution
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| is to match a regular expression on the #[code Doc]'s #[code text] and
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| use the #[+api("doc#char_span") #[code Doc.char_span]] method to
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| create a #[code Span] from the character indices of the match:
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+code-exec.
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import spacy
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import re
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nlp = spacy.load('en_core_web_sm')
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doc = nlp(u'The spelling is "definitely", not "definately" or "deffinitely".')
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DEFINITELY_PATTERN = re.compile(r'deff?in[ia]tely')
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for match in re.finditer(DEFINITELY_PATTERN, doc.text):
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start, end = match.span() # get matched indices
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span = doc.char_span(start, end) # create Span from indices
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print(span.text)
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p
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| You can also use the regular expression with spaCy's #[code Matcher] by
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| converting it to a token flag. To ensure efficiency, the
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| #[code Matcher] can only access the C-level data. This means that it can
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| either use built-in token attributes or #[strong binary flags].
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| #[+api("vocab#add_flag") #[code Vocab.add_flag]] returns a flag ID which
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| you can use as a key of a token match pattern. Tokens that match the
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| regular expression will return #[code True] for the #[code IS_DEFINITELY]
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| flag.
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+code-exec.
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import spacy
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from spacy.matcher import Matcher
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import re
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nlp = spacy.load('en_core_web_sm')
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definitely_flag = lambda text: bool(re.compile(r'deff?in[ia]tely').match(text))
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IS_DEFINITELY = nlp.vocab.add_flag(definitely_flag)
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matcher = Matcher(nlp.vocab)
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matcher.add('DEFINITELY', None, [{IS_DEFINITELY: True}])
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doc = nlp(u'The spelling is "definitely", not "definately" or "deffinitely".')
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matches = matcher(doc)
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for match_id, start, end in matches:
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span = doc[start:end]
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print(span.text)
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p
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| Providing the regular expressions as binary flags also lets you use them
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| in combination with other token patterns – for example, to match the
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| word "definitely" in various spellings, followed by a case-insensitive
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| "not" and and adjective:
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+code.
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[{IS_DEFINITELY: True}, {'LOWER': 'not'}, {'POS': 'ADJ'}]
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+h(3, "example1") Example: Using linguistic annotations
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p
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| Let's say you're analysing user comments and you want to find out what
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| people are saying about Facebook. You want to start off by finding
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| adjectives following "Facebook is" or "Facebook was". This is obviously
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| a very rudimentary solution, but it'll be fast, and a great way get an
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| idea for what's in your data. Your pattern could look like this:
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+code.
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[{'LOWER': 'facebook'}, {'LEMMA': 'be'}, {'POS': 'ADV', 'OP': '*'}, {'POS': 'ADJ'}]
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p
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| This translates to a token whose lowercase form matches "facebook"
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| (like Facebook, facebook or FACEBOOK), followed by a token with the lemma
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| "be" (for example, is, was, or 's), followed by an #[strong optional] adverb,
|
||
| followed by an adjective. Using the linguistic annotations here is
|
||
| especially useful, because you can tell spaCy to match "Facebook's
|
||
| annoying", but #[strong not] "Facebook's annoying ads". The optional
|
||
| adverb makes sure you won't miss adjectives with intensifiers, like
|
||
| "pretty awful" or "very nice".
|
||
|
||
p
|
||
| To get a quick overview of the results, you could collect all sentences
|
||
| containing a match and render them with the
|
||
| #[+a("/usage/visualizers") displaCy visualizer].
|
||
| In the callback function, you'll have access to the #[code start] and
|
||
| #[code end] of each match, as well as the parent #[code Doc]. This lets
|
||
| you determine the sentence containing the match,
|
||
| #[code doc[start : end].sent], and calculate the start and end of the
|
||
| matched span within the sentence. Using displaCy in
|
||
| #[+a("/usage/visualizers#manual-usage") "manual" mode] lets you
|
||
| pass in a list of dictionaries containing the text and entities to render.
|
||
|
||
+code-exec.
|
||
import spacy
|
||
from spacy import displacy
|
||
from spacy.matcher import Matcher
|
||
|
||
nlp = spacy.load('en_core_web_sm')
|
||
matcher = Matcher(nlp.vocab)
|
||
matched_sents = [] # collect data of matched sentences to be visualized
|
||
|
||
def collect_sents(matcher, doc, i, matches):
|
||
match_id, start, end = matches[i]
|
||
span = doc[start : end] # matched span
|
||
sent = span.sent # sentence containing matched span
|
||
# append mock entity for match in displaCy style to matched_sents
|
||
# get the match span by ofsetting the start and end of the span with the
|
||
# start and end of the sentence in the doc
|
||
match_ents = [{'start': span.start_char - sent.start_char,
|
||
'end': span.end_char - sent.start_char,
|
||
'label': 'MATCH'}]
|
||
matched_sents.append({'text': sent.text, 'ents': match_ents })
|
||
|
||
pattern = [{'LOWER': 'facebook'}, {'LEMMA': 'be'}, {'POS': 'ADV', 'OP': '*'},
|
||
{'POS': 'ADJ'}]
|
||
matcher.add('FacebookIs', collect_sents, pattern) # add pattern
|
||
doc = nlp(u"I'd say that Facebook is evil. – Facebook is pretty cool, right?")
|
||
matches = matcher(doc)
|
||
|
||
# serve visualization of sentences containing match with displaCy
|
||
# set manual=True to make displaCy render straight from a dictionary
|
||
# (if you're not running the code within a Jupyer environment, you can
|
||
# remove jupyter=True and use displacy.serve instead)
|
||
displacy.render(matched_sents, style='ent', manual=True, jupyter=True)
|
||
|
||
+h(3, "example2") Example: Phone numbers
|
||
|
||
p
|
||
| Phone numbers can have many different formats and matching them is often
|
||
| tricky. During tokenization, spaCy will leave sequences of numbers intact
|
||
| and only split on whitespace and punctuation. This means that your match
|
||
| pattern will have to look out for number sequences of a certain length,
|
||
| surrounded by specific punctuation – depending on the
|
||
| #[+a("https://en.wikipedia.org/wiki/National_conventions_for_writing_telephone_numbers") national conventions].
|
||
|
||
p
|
||
| The #[code IS_DIGIT] flag is not very helpful here, because it doesn't
|
||
| tell us anything about the length. However, you can use the #[code SHAPE]
|
||
| flag, with each #[code d] representing a digit:
|
||
|
||
+code.
|
||
[{'ORTH': '('}, {'SHAPE': 'ddd'}, {'ORTH': ')'}, {'SHAPE': 'dddd'},
|
||
{'ORTH': '-', 'OP': '?'}, {'SHAPE': 'dddd'}]
|
||
|
||
p
|
||
| This will match phone numbers of the format #[strong (123) 4567 8901] or
|
||
| #[strong (123) 4567-8901]. To also match formats like #[strong (123) 456 789],
|
||
| you can add a second pattern using #[code 'ddd'] in place of #[code 'dddd'].
|
||
| By hard-coding some values, you can match only certain, country-specific
|
||
| numbers. For example, here's a pattern to match the most common formats of
|
||
| #[+a("https://en.wikipedia.org/wiki/National_conventions_for_writing_telephone_numbers#Germany") international German numbers]:
|
||
|
||
+code.
|
||
[{'ORTH': '+'}, {'ORTH': '49'}, {'ORTH': '(', 'OP': '?'}, {'SHAPE': 'dddd'},
|
||
{'ORTH': ')', 'OP': '?'}, {'SHAPE': 'dddddd'}]
|
||
|
||
p
|
||
| Depending on the formats your application needs to match, creating an
|
||
| extensive set of rules like this is often better than training a model.
|
||
| It'll produce more predictable results, is much easier to modify and
|
||
| extend, and doesn't require any training data – only a set of
|
||
| test cases.
|
||
|
||
+code-exec.
|
||
import spacy
|
||
from spacy.matcher import Matcher
|
||
|
||
nlp = spacy.load('en_core_web_sm')
|
||
matcher = Matcher(nlp.vocab)
|
||
pattern = [{'ORTH': '('}, {'SHAPE': 'ddd'}, {'ORTH': ')'}, {'SHAPE': 'ddd'},
|
||
{'ORTH': '-', 'OP': '?'}, {'SHAPE': 'ddd'}]
|
||
matcher.add('PHONE_NUMBER', None, pattern)
|
||
|
||
doc = nlp(u"Call me at (123) 456 789 or (123) 456 789!")
|
||
print([t.text for t in doc])
|
||
matches = matcher(doc)
|
||
for match_id, start, end in matches:
|
||
span = doc[start:end]
|
||
print(span.text)
|
||
|
||
+h(3, "example3") Example: Hashtags and emoji on social media
|
||
|
||
p
|
||
| Social media posts, especially tweets, can be difficult to work with.
|
||
| They're very short and often contain various emoji and hashtags. By only
|
||
| looking at the plain text, you'll lose a lot of valuable semantic
|
||
| information.
|
||
|
||
p
|
||
| Let's say you've extracted a large sample of social media posts on a
|
||
| specific topic, for example posts mentioning a brand name or product.
|
||
| As the first step of your data exploration, you want to filter out posts
|
||
| containing certain emoji and use them to assign a general sentiment
|
||
| score, based on whether the expressed emotion is positive or negative,
|
||
| e.g. #[span.o-icon.o-icon--inline 😀] or #[span.o-icon.o-icon--inline 😞].
|
||
| You also want to find, merge and label hashtags like
|
||
| #[code #MondayMotivation], to be able to ignore or analyse them later.
|
||
|
||
+aside("Note on sentiment analysis")
|
||
| Ultimately, sentiment analysis is not always #[em that] easy. In
|
||
| addition to the emoji, you'll also want to take specific words into
|
||
| account and check the #[code subtree] for intensifiers like "very", to
|
||
| increase the sentiment score. At some point, you might also want to train
|
||
| a sentiment model. However, the approach described in this example is
|
||
| very useful for #[strong bootstrapping rules to collect training data].
|
||
| It's also an incredibly fast way to gather first insights into your data
|
||
| – with about 1 million tweets, you'd be looking at a processing time of
|
||
| #[strong under 1 minute].
|
||
|
||
p
|
||
| By default, spaCy's tokenizer will split emoji into separate tokens. This
|
||
| means that you can create a pattern for one or more emoji tokens.
|
||
| Valid hashtags usually consist of a #[code #], plus a sequence of
|
||
| ASCII characters with no whitespace, making them easy to match as well.
|
||
|
||
+code-exec.
|
||
from spacy.lang.en import English
|
||
from spacy.matcher import Matcher
|
||
|
||
nlp = English() # we only want the tokenizer, so no need to load a model
|
||
matcher = Matcher(nlp.vocab)
|
||
|
||
pos_emoji = [u'😀', u'😃', u'😂', u'🤣', u'😊', u'😍'] # positive emoji
|
||
neg_emoji = [u'😞', u'😠', u'😩', u'😢', u'😭', u'😒'] # negative emoji
|
||
|
||
# add patterns to match one or more emoji tokens
|
||
pos_patterns = [[{'ORTH': emoji}] for emoji in pos_emoji]
|
||
neg_patterns = [[{'ORTH': emoji}] for emoji in neg_emoji]
|
||
|
||
# function to label the sentiment
|
||
def label_sentiment(matcher, doc, i, matches):
|
||
match_id, start, end = matches[i]
|
||
if doc.vocab.strings[match_id] == 'HAPPY': # don't forget to get string!
|
||
doc.sentiment += 0.1 # add 0.1 for positive sentiment
|
||
elif doc.vocab.strings[match_id] == 'SAD':
|
||
doc.sentiment -= 0.1 # subtract 0.1 for negative sentiment
|
||
|
||
matcher.add('HAPPY', label_sentiment, *pos_patterns) # add positive pattern
|
||
matcher.add('SAD', label_sentiment, *neg_patterns) # add negative pattern
|
||
|
||
# add pattern for valid hashtag, i.e. '#' plus any ASCII token
|
||
matcher.add('HASHTAG', None, [{'ORTH': '#'}, {'IS_ASCII': True}])
|
||
|
||
doc = nlp(u"Hello world 😀 #MondayMotivation")
|
||
matches = matcher(doc)
|
||
for match_id, start, end in matches:
|
||
string_id = doc.vocab.strings[match_id] # look up string ID
|
||
span = doc[start:end]
|
||
print(string_id, span.text)
|
||
|
||
p
|
||
| Because the #[code on_match] callback receives the ID of each match, you
|
||
| can use the same function to handle the sentiment assignment for both
|
||
| the positive and negative pattern. To keep it simple, we'll either add
|
||
| or subtract #[code 0.1] points – this way, the score will also reflect
|
||
| combinations of emoji, even positive #[em and] negative ones.
|
||
|
||
p
|
||
| With a library like
|
||
| #[+a("https://github.com/bcongdon/python-emojipedia") Emojipedia],
|
||
| we can also retrieve a short description for each emoji – for example,
|
||
| #[span.o-icon.o-icon--inline 😍]'s official title is "Smiling Face With
|
||
| Heart-Eyes". Assigning it to a
|
||
| #[+a("/usage/processing-pipelines#custom-components-attributes") custom attribute]
|
||
| on the emoji span will make it available as #[code span._.emoji_desc].
|
||
|
||
+code.
|
||
from emojipedia import Emojipedia # installation: pip install emojipedia
|
||
from spacy.tokens import Span # get the global Span object
|
||
|
||
Span.set_extension('emoji_desc', default=None) # register the custom attribute
|
||
|
||
def label_sentiment(matcher, doc, i, matches):
|
||
match_id, start, end = matches[i]
|
||
if doc.vocab.strings[match_id] == 'HAPPY': # don't forget to get string!
|
||
doc.sentiment += 0.1 # add 0.1 for positive sentiment
|
||
elif doc.vocab.strings[match_id] == 'SAD':
|
||
doc.sentiment -= 0.1 # subtract 0.1 for negative sentiment
|
||
span = doc[start : end]
|
||
emoji = Emojipedia.search(span[0].text) # get data for emoji
|
||
span._.emoji_desc = emoji.title # assign emoji description
|
||
|
||
p
|
||
| To label the hashtags, we can use a
|
||
| #[+a("/usage/processing-pipelines#custom-components-attributes") custom attribute]
|
||
| set on the respective token:
|
||
|
||
+code-exec.
|
||
import spacy
|
||
from spacy.matcher import Matcher
|
||
from spacy.tokens import Token
|
||
|
||
nlp = spacy.load('en_core_web_sm')
|
||
matcher = Matcher(nlp.vocab)
|
||
|
||
# add pattern for valid hashtag, i.e. '#' plus any ASCII token
|
||
matcher.add('HASHTAG', None, [{'ORTH': '#'}, {'IS_ASCII': True}])
|
||
|
||
# register token extension
|
||
Token.set_extension('is_hashtag', default=False)
|
||
|
||
doc = nlp(u"Hello world 😀 #MondayMotivation")
|
||
matches = matcher(doc)
|
||
hashtags = []
|
||
for match_id, start, end in matches:
|
||
if doc.vocab.strings[match_id] == 'HASHTAG':
|
||
hashtags.append(doc[start:end])
|
||
for span in hashtags:
|
||
span.merge()
|
||
for token in span:
|
||
token._.is_hashtag = True
|
||
|
||
for token in doc:
|
||
print(token.text, token._.is_hashtag)
|
||
|
||
p
|
||
| To process a stream of social media posts, we can use
|
||
| #[+api("language#pipe") #[code Language.pipe()]], which will return a
|
||
| stream of #[code Doc] objects that we can pass to
|
||
| #[+api("matcher#pipe") #[code Matcher.pipe()]].
|
||
|
||
+code.
|
||
docs = nlp.pipe(LOTS_OF_TWEETS)
|
||
matches = matcher.pipe(docs)
|