2017-10-03 15:26:20 +03:00
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//- 💫 DOCS > USAGE > LINGUISTIC FEATURES > TOKENIZATION
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2016-11-05 22:40:11 +03:00
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p
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| Tokenization is the task of splitting a text into meaningful segments,
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| called #[em tokens]. The input to the tokenizer is a unicode text, and
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| the output is a #[+api("doc") #[code Doc]] object. To construct a
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| #[code Doc] object, you need a #[+api("vocab") #[code Vocab]] instance,
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| a sequence of #[code word] strings, and optionally a sequence of
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| #[code spaces] booleans, which allow you to maintain alignment of the
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| tokens into the original string.
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2017-10-03 15:26:20 +03:00
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include ../_spacy-101/_tokenization
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2017-05-24 01:37:47 +03:00
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2017-10-03 15:26:20 +03:00
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+h(4, "101-data") Tokenizer data
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2017-05-24 01:37:47 +03:00
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p
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| #[strong Global] and #[strong language-specific] tokenizer data is
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2017-10-03 15:26:20 +03:00
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| supplied via the language data in
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| #[+src(gh("spaCy", "spacy/lang")) #[code spacy/lang]].
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2017-05-24 01:37:47 +03:00
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| The tokenizer exceptions define special cases like "don't" in English,
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| which needs to be split into two tokens: #[code {ORTH: "do"}] and
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| #[code {ORTH: "n't", LEMMA: "not"}]. The prefixes, suffixes and infixes
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| mosty define punctuation rules – for example, when to split off periods
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| (at the end of a sentence), and when to leave token containing periods
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| intact (abbreviations like "U.S.").
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2017-10-03 15:26:20 +03:00
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+graphic("/assets/img/language_data.svg")
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include ../../assets/img/language_data.svg
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2017-05-24 01:37:47 +03:00
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+infobox
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| For more details on the language-specific data, see the
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2017-10-03 15:26:20 +03:00
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| usage guide on #[+a("/usage/adding-languages") adding languages].
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2016-11-05 22:40:11 +03:00
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2017-10-03 15:26:20 +03:00
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+h(3, "special-cases") Adding special case tokenization rules
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2016-11-05 22:40:11 +03:00
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p
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2017-08-20 13:00:15 +03:00
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| Most domains have at least some idiosyncrasies that require custom
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2017-05-24 01:37:47 +03:00
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| tokenization rules. This could be very certain expressions, or
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| abbreviations only used in this specific field.
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+aside("Language data vs. custom tokenization")
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| Tokenization rules that are specific to one language, but can be
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| #[strong generalised across that language] should ideally live in the
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2017-10-03 15:26:20 +03:00
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| language data in #[+src(gh("spaCy", "spacy/lang")) #[code spacy/lang]] – we
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2017-05-24 01:37:47 +03:00
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| always appreciate pull requests! Anything that's specific to a domain or
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| text type – like financial trading abbreviations, or Bavarian youth slang
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| – should be added as a special case rule to your tokenizer instance. If
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| you're dealing with a lot of customisations, it might make sense to create
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| an entirely custom subclass.
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p
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| Here's how to add a special case rule to an existing
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2016-11-05 22:40:11 +03:00
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| #[+api("tokenizer") #[code Tokenizer]] instance:
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2018-04-29 03:06:46 +03:00
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+code-exec.
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2017-01-17 21:35:55 +03:00
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import spacy
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2018-02-09 16:46:59 +03:00
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from spacy.symbols import ORTH, LEMMA, POS, TAG
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2017-01-17 21:35:55 +03:00
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2018-04-29 03:06:46 +03:00
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nlp = spacy.load('en_core_web_sm')
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doc = nlp(u'gimme that') # phrase to tokenize
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print([w.text for w in doc]) # ['gimme', 'that']
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2017-05-24 01:37:47 +03:00
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# add special case rule
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special_case = [{ORTH: u'gim', LEMMA: u'give', POS: u'VERB'}, {ORTH: u'me'}]
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nlp.tokenizer.add_special_case(u'gimme', special_case)
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2018-04-29 03:06:46 +03:00
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# check new tokenization
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print([w.text for w in nlp(u'gimme that')]) # ['gim', 'me', 'that']
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2017-10-03 15:26:20 +03:00
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# Pronoun lemma is returned as -PRON-!
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2018-04-29 03:06:46 +03:00
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print([w.lemma_ for w in nlp(u'gimme that')]) # ['give', '-PRON-', 'that']
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2016-11-05 22:40:11 +03:00
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p
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2017-10-03 15:26:20 +03:00
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| For details on spaCy's custom pronoun lemma #[code -PRON-],
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| #[+a("/usage/#pron-lemma") see here].
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2016-11-05 22:40:11 +03:00
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| The special case doesn't have to match an entire whitespace-delimited
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| substring. The tokenizer will incrementally split off punctuation, and
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| keep looking up the remaining substring:
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+code.
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assert 'gimme' not in [w.text for w in nlp(u'gimme!')]
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assert 'gimme' not in [w.text for w in nlp(u'("...gimme...?")')]
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p
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| The special case rules have precedence over the punctuation splitting:
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+code.
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2017-05-24 01:37:47 +03:00
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special_case = [{ORTH: u'...gimme...?', LEMMA: u'give', TAG: u'VB'}]
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nlp.tokenizer.add_special_case(u'...gimme...?', special_case)
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2016-11-05 22:40:11 +03:00
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assert len(nlp(u'...gimme...?')) == 1
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p
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| Because the special-case rules allow you to set arbitrary token
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| attributes, such as the part-of-speech, lemma, etc, they make a good
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| mechanism for arbitrary fix-up rules. Having this logic live in the
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| tokenizer isn't very satisfying from a design perspective, however, so
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| the API may eventually be exposed on the
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| #[+api("language") #[code Language]] class itself.
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2017-10-03 15:26:20 +03:00
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+h(3, "how-tokenizer-works") How spaCy's tokenizer works
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2016-11-05 22:40:11 +03:00
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p
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| spaCy introduces a novel tokenization algorithm, that gives a better
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| balance between performance, ease of definition, and ease of alignment
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| into the original string.
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p
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| After consuming a prefix or infix, we consult the special cases again.
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| We want the special cases to handle things like "don't" in English, and
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| we want the same rule to work for "(don't)!". We do this by splitting
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| off the open bracket, then the exclamation, then the close bracket, and
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| finally matching the special-case. Here's an implementation of the
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| algorithm in Python, optimized for readability rather than performance:
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+code.
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2017-10-03 15:26:20 +03:00
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def tokenizer_pseudo_code(text, special_cases,
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find_prefix, find_suffix, find_infixes):
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2016-11-05 22:40:11 +03:00
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tokens = []
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for substring in text.split(' '):
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suffixes = []
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while substring:
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if substring in special_cases:
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tokens.extend(special_cases[substring])
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substring = ''
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elif find_prefix(substring) is not None:
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split = find_prefix(substring)
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tokens.append(substring[:split])
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substring = substring[split:]
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elif find_suffix(substring) is not None:
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split = find_suffix(substring)
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2018-07-27 12:04:12 +03:00
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suffixes.append(substring[-split:])
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substring = substring[:-split]
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2016-11-05 22:40:11 +03:00
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elif find_infixes(substring):
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infixes = find_infixes(substring)
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offset = 0
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for match in infixes:
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2017-11-09 06:13:03 +03:00
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tokens.append(substring[offset : match.start()])
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2016-11-05 22:40:11 +03:00
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tokens.append(substring[match.start() : match.end()])
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offset = match.end()
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substring = substring[offset:]
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else:
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tokens.append(substring)
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substring = ''
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2017-06-03 12:31:30 +03:00
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tokens.extend(reversed(suffixes))
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2017-11-09 06:13:03 +03:00
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return tokens
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2016-11-05 22:40:11 +03:00
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p
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| The algorithm can be summarized as follows:
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+list("numbers")
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+item Iterate over space-separated substrings
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+item
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| Check whether we have an explicitly defined rule for this substring.
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| If we do, use it.
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+item Otherwise, try to consume a prefix.
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+item
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| If we consumed a prefix, go back to the beginning of the loop, so
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| that special-cases always get priority.
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+item If we didn't consume a prefix, try to consume a suffix.
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+item
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| If we can't consume a prefix or suffix, look for "infixes" — stuff
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| like hyphens etc.
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+item Once we can't consume any more of the string, handle it as a single token.
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2017-10-03 15:26:20 +03:00
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+h(3, "native-tokenizers") Customizing spaCy's Tokenizer class
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2016-11-05 22:40:11 +03:00
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p
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2017-05-24 01:37:47 +03:00
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| Let's imagine you wanted to create a tokenizer for a new language or
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2017-10-03 15:26:20 +03:00
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| specific domain. There are five things you would need to define:
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2016-11-05 22:40:11 +03:00
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+list("numbers")
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+item
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| A dictionary of #[strong special cases]. This handles things like
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| contractions, units of measurement, emoticons, certain
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| abbreviations, etc.
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+item
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| A function #[code prefix_search], to handle
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| #[strong preceding punctuation], such as open quotes, open brackets,
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| etc
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+item
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| A function #[code suffix_search], to handle
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| #[strong succeeding punctuation], such as commas, periods, close
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| quotes, etc.
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+item
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| A function #[code infixes_finditer], to handle non-whitespace
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| separators, such as hyphens etc.
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2017-10-03 15:26:20 +03:00
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+item
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| An optional boolean function #[code token_match] matching strings
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| that should never be split, overriding the previous rules.
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| Useful for things like URLs or numbers.
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2016-11-05 22:40:11 +03:00
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p
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| You shouldn't usually need to create a #[code Tokenizer] subclass.
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| Standard usage is to use #[code re.compile()] to build a regular
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| expression object, and pass its #[code .search()] and
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| #[code .finditer()] methods:
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2018-04-29 03:06:46 +03:00
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+code-exec.
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import re
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import spacy
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2016-11-05 22:40:11 +03:00
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from spacy.tokenizer import Tokenizer
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2017-11-04 01:33:18 +03:00
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prefix_re = re.compile(r'''^[\[\("']''')
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suffix_re = re.compile(r'''[\]\)"']$''')
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2017-10-03 15:26:20 +03:00
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infix_re = re.compile(r'''[-~]''')
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simple_url_re = re.compile(r'''^https?://''')
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2017-05-24 01:37:47 +03:00
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2017-06-01 14:02:50 +03:00
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def custom_tokenizer(nlp):
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return Tokenizer(nlp.vocab, prefix_search=prefix_re.search,
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2017-10-03 15:26:20 +03:00
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suffix_search=suffix_re.search,
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infix_finditer=infix_re.finditer,
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token_match=simple_url_re.match)
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2016-11-05 22:40:11 +03:00
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2018-04-29 03:06:46 +03:00
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nlp = spacy.load('en_core_web_sm')
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2017-06-01 14:02:50 +03:00
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nlp.tokenizer = custom_tokenizer(nlp)
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2018-04-29 03:06:46 +03:00
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doc = nlp(u"hello-world.")
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print([t.text for t in doc])
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2016-11-05 22:40:11 +03:00
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p
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| If you need to subclass the tokenizer instead, the relevant methods to
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| specialize are #[code find_prefix], #[code find_suffix] and
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| #[code find_infix].
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2017-11-04 01:33:18 +03:00
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+infobox("Important note", "⚠️")
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| When customising the prefix, suffix and infix handling, remember that
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| you're passing in #[strong functions] for spaCy to execute, e.g.
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| #[code prefix_re.search] – not just the regular expressions. This means
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| that your functions also need to define how the rules should be applied.
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| For example, if you're adding your own prefix rules, you need
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| to make sure they're only applied to characters at the
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| #[strong beginning of a token], e.g. by adding #[code ^]. Similarly,
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| suffix rules should only be applied at the #[strong end of a token],
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| so your expression should end with a #[code $].
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2017-10-03 15:26:20 +03:00
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+h(3, "custom-tokenizer") Hooking an arbitrary tokenizer into the pipeline
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2016-11-05 22:40:11 +03:00
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p
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2017-05-25 01:30:21 +03:00
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| The tokenizer is the first component of the processing pipeline and the
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| only one that can't be replaced by writing to #[code nlp.pipeline]. This
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| is because it has a different signature from all the other components:
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| it takes a text and returns a #[code Doc], whereas all other components
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| expect to already receive a tokenized #[code Doc].
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2017-10-03 15:26:20 +03:00
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+graphic("/assets/img/pipeline.svg")
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include ../../assets/img/pipeline.svg
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2017-05-25 01:30:21 +03:00
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p
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| To overwrite the existing tokenizer, you need to replace
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| #[code nlp.tokenizer] with a custom function that takes a text, and
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| returns a #[code Doc].
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2016-11-05 22:40:11 +03:00
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+code.
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2017-05-25 01:30:21 +03:00
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nlp = spacy.load('en')
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nlp.tokenizer = my_tokenizer
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+table(["Argument", "Type", "Description"])
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+row
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+cell #[code text]
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+cell unicode
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+cell The raw text to tokenize.
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2017-10-03 15:26:20 +03:00
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+row("foot")
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2017-05-25 01:30:21 +03:00
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+cell returns
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+cell #[code Doc]
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+cell The tokenized document.
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+infobox("Important note: using a custom tokenizer")
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.o-block
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| In spaCy v1.x, you had to add a custom tokenizer by passing it to the
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| #[code make_doc] keyword argument, or by passing a tokenizer "factory"
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| to #[code create_make_doc]. This was unnecessarily complicated. Since
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2018-05-07 22:24:35 +03:00
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| spaCy v2.0, you can write to #[code nlp.tokenizer] instead. If your
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2017-05-25 01:30:21 +03:00
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| tokenizer needs the vocab, you can write a function and use
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| #[code nlp.vocab].
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+code-new.
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nlp.tokenizer = my_tokenizer
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nlp.tokenizer = my_tokenizer_factory(nlp.vocab)
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+code-old.
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nlp = spacy.load('en', make_doc=my_tokenizer)
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nlp = spacy.load('en', create_make_doc=my_tokenizer_factory)
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+h(3, "custom-tokenizer-example") Example: A custom whitespace tokenizer
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2016-11-05 22:40:11 +03:00
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p
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| To construct the tokenizer, we usually want attributes of the #[code nlp]
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| pipeline. Specifically, we want the tokenizer to hold a reference to the
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2017-05-25 01:30:21 +03:00
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| vocabulary object. Let's say we have the following class as
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2016-11-05 22:40:11 +03:00
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| our tokenizer:
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2018-04-29 03:06:46 +03:00
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+code-exec.
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import spacy
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2016-11-05 22:40:11 +03:00
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from spacy.tokens import Doc
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class WhitespaceTokenizer(object):
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2017-05-25 01:30:21 +03:00
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def __init__(self, vocab):
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self.vocab = vocab
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2016-11-05 22:40:11 +03:00
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def __call__(self, text):
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words = text.split(' ')
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# All tokens 'own' a subsequent space character in this tokenizer
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2017-09-14 13:49:59 +03:00
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spaces = [True] * len(words)
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2016-11-05 22:40:11 +03:00
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return Doc(self.vocab, words=words, spaces=spaces)
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2018-04-29 03:06:46 +03:00
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nlp = spacy.load('en_core_web_sm')
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nlp.tokenizer = WhitespaceTokenizer(nlp.vocab)
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doc = nlp(u"What's happened to me? he thought. It wasn't a dream.")
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print([t.text for t in doc])
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2016-11-05 22:40:11 +03:00
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p
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2017-05-25 01:30:21 +03:00
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| As you can see, we need a #[code Vocab] instance to construct this — but
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| we won't have it until we get back the loaded #[code nlp] object. The
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| simplest solution is to build the tokenizer in two steps. This also means
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| that you can reuse the "tokenizer factory" and initialise it with
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| different instances of #[code Vocab].
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2016-11-05 22:40:11 +03:00
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2017-10-03 15:26:20 +03:00
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+h(3, "own-annotations") Bringing your own annotations
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p
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| spaCy generally assumes by default that your data is raw text. However,
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| sometimes your data is partially annotated, e.g. with pre-existing
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| tokenization, part-of-speech tags, etc. The most common situation is
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| that you have pre-defined tokenization. If you have a list of strings,
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| you can create a #[code Doc] object directly. Optionally, you can also
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| specify a list of boolean values, indicating whether each word has a
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| subsequent space.
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2018-04-29 03:06:46 +03:00
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+code-exec.
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import spacy
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from spacy.tokens import Doc
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from spacy.lang.en import English
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nlp = English()
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doc = Doc(nlp.vocab, words=[u'Hello', u',', u'world', u'!'],
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spaces=[False, True, False, False])
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print([(t.text, t.text_with_ws, t.whitespace_) for t in doc])
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2017-10-03 15:26:20 +03:00
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p
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| If provided, the spaces list must be the same length as the words list.
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| The spaces list affects the #[code doc.text], #[code span.text],
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| #[code token.idx], #[code span.start_char] and #[code span.end_char]
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| attributes. If you don't provide a #[code spaces] sequence, spaCy will
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| assume that all words are whitespace delimited.
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2018-04-29 03:06:46 +03:00
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+code-exec.
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import spacy
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from spacy.tokens import Doc
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from spacy.lang.en import English
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nlp = English()
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2017-10-03 15:26:20 +03:00
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bad_spaces = Doc(nlp.vocab, words=[u'Hello', u',', u'world', u'!'])
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2018-04-29 03:06:46 +03:00
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good_spaces = Doc(nlp.vocab, words=[u'Hello', u',', u'world', u'!'],
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spaces=[False, True, False, False])
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print(bad_spaces.text) # 'Hello , world !'
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print(good_spaces.text) # 'Hello, world!'
|
2017-10-03 15:26:20 +03:00
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p
|
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| Once you have a #[+api("doc") #[code Doc]] object, you can write to its
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| attributes to set the part-of-speech tags, syntactic dependencies, named
|
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| entities and other attributes. For details, see the respective usage
|
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| pages.
|