mirror of https://github.com/explosion/spaCy.git
93 lines
4.5 KiB
Plaintext
93 lines
4.5 KiB
Plaintext
//- 💫 DOCS > USAGE > SPACY 101 > VOCAB & STRINGSTORE
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p
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| Whenever possible, spaCy tries to store data in a vocabulary, the
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| #[+api("vocab") #[code Vocab]], that will be
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| #[strong shared by multiple documents]. To save memory, spaCy also
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| encodes all strings to #[strong integer IDs] – in this case for example,
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| "coffee" has the ID #[code 3672]. Entity labels like "ORG" and
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| part-of-speech tags like "VERB" are also encoded. Internally, spaCy
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| only "speaks" in integer IDs.
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+aside
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| #[strong Token]: A word, punctuation mark etc. #[em in context], including
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| its attributes, tags and dependencies.#[br]
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| #[strong Lexeme]: A "word type" with no context. Includes the word shape
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| and flags, e.g. if it's lowercase, a digit or punctuation.#[br]
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| #[strong Doc]: A processed container of tokens in context.#[br]
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| #[strong Vocab]: The collection of lexemes.#[br]
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| #[strong StringStore]: The dictionary mapping integer IDs to strings, for
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| example #[code 3672] → "coffee".
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+image
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include ../../../assets/img/docs/vocab_stringstore.svg
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.u-text-right
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+button("/assets/img/docs/vocab_stringstore.svg", false, "secondary").u-text-tag View large graphic
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p
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| If you process lots of documents containing the word "coffee" in all
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| kinds of different contexts, storing the exact string "coffee" every time
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| would take up way too much space. So instead, spaCy assigns it an ID
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| and stores it in the #[+api("stringstore") #[code StringStore]]. You can
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| think of the #[code StringStore] as a
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| #[strong lookup table that works in both directions] – you can look up a
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| string to get its ID, or an ID to get its string:
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+code.
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doc = nlp(u'I like coffee')
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assert doc.vocab.strings[u'coffee'] == 3572
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assert doc.vocab.strings[3572] == u'coffee'
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p
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| Now that all strings are encoded, the entries in the vocabulary
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| #[strong don't need to include the word text] themselves. Instead,
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| they can look it up in the #[code StringStore] via its integer ID. Each
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| entry in the vocabulary, also called #[+api("lexeme") #[code Lexeme]],
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| contains the #[strong context-independent] information about a word.
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| For example, no matter if "love" is used as a verb or a noun in some
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| context, its spelling and whether it consists of alphabetic characters
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| won't ever change.
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+code.
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for word in doc:
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lexeme = doc.vocab[word.text]
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print(lexeme.text, lexeme.orth, lexeme.shape_, lexeme.prefix_, lexeme.suffix_,
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lexeme.is_alpha, lexeme.is_digit, lexeme.is_title, lexeme.lang_)
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+aside
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| #[strong Text]: The original text of the lexeme.#[br]
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| #[strong Orth]: The integer ID of the lexeme.#[br]
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| #[strong Shape]: The abstract word shape of the lexeme.#[br]
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| #[strong Prefix]: By default, the first letter of the word string.#[br]
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| #[strong Suffix]: By default, the last three letters of the word string.#[br]
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| #[strong is alpha]: Does the lexeme consist of alphabetic characters?#[br]
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| #[strong is digit]: Does the lexeme consist of digits?#[br]
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| #[strong is title]: Does the lexeme consist of alphabetic characters?#[br]
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| #[strong Lang]: The language of the parent vocabulary.
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+table(["text", "orth", "shape", "prefix", "suffix", "is_alpha", "is_digit", "is_title", "lang"])
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- var style = [0, 1, 1, 0, 0, 1, 1, 1, 0]
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+annotation-row(["I", 508, "X", "I", "I", true, false, true, "en"], style)
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+annotation-row(["love", 949, "xxxx", "l", "ove", true, false, false, "en"], style)
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+annotation-row(["coffee", 3572, "xxxx", "c", "ffe", true, false, false, "en"], style)
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p
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| The specific entries in the voabulary and their IDs don't really matter –
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| #[strong as long as they match]. That's why you always need to make sure
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| all objects you create have access to the same vocabulary. If they don't,
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| the IDs won't match and spaCy will either produce very confusing results,
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| or fail alltogether.
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+code.
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from spacy.tokens import Doc
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from spacy.vocab import Vocab
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doc = nlp(u'I like coffee') # original Doc
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new_doc = Doc(Vocab(), words=['I', 'like', 'coffee']) # new Doc with empty Vocab
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assert doc.vocab.strings[u'coffee'] == 3572 # ID in vocab of Doc
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assert new_doc.vocab.strings[u'coffee'] == 446 # ID in vocab of new Doc
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p
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| Even though both #[code Doc] objects contain the same words, the internal
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| integer IDs are very different.
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