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195 lines
6.8 KiB
Plaintext
195 lines
6.8 KiB
Plaintext
//- ----------------------------------
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//- 💫 DOCS > API > LEXEME
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//- ----------------------------------
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+section("lexeme")
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+h(2, "lexeme", "https://github.com/" + SOCIAL.github + "/spaCy/blob/master/spacy/lexeme.pyx")
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| #[+tag class] Lexeme
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p.
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The Lexeme object represents a lexical type, stored in the vocabulary –
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as opposed to a token, occurring in a document.
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p.
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Each Token object receives a reference to a lexeme object (specifically,
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it receives a pointer to a #[code LexemeC] struct). This allows features
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to be computed and saved once per type, rather than once per token. As
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job sizes grow, this amounts to substantial efficiency improvements, as
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the vocabulary size (number of types) will be much smaller than the total
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number of words processed (number of tokens).
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p.
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All Lexeme attributes are therefore context independent, as a single lexeme
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is reused for all usages of that word. Lexemes are keyed by the #[code orth]
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attribute.
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p.
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Most Lexeme attributes can be set, with the exception of the primary key,
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#[code orth]. Assigning to an attribute of the #[code Lexeme] object writes
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to the underlying struct, so all tokens that are backed by that
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#[code Lexeme] will inherit the new value.
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+code("python", "Overview").
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class Lexeme:
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def __init__(self, vocab, key):
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return self
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int rank
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int orth, lower, shape, prefix, suffix
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unicode orth_, lower_, shape_, prefix_, suffix_
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bool is_alpha, is_ascii, is_lower, is_title, is_punct, is_space, like_url, like_num, like_email, is_oov, is_stop
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float prob
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int cluster
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numpy.ndarray[float64] vector
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bool has_vector
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def set_flag(self, flag_id, value):
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return None
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def check_flag(self, flag_id):
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return bool
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def similarity(self, other):
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return float
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+table(["Example", "Description"])
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+row
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+cell #[code.lang-python lexeme = nlp.vocab[string]]
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+cell Lookup by string
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+row
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+cell #[code.lang-python lexeme = vocab[i]]
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+cell Lookup by integer
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+section("lexeme-stringfeatures")
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+h(3, "lexeme-stringfeatures").
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String Features
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+table(["Name", "Description"])
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+row
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+cell orth / orth_
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+cell.
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The form of the word with no string normalization or processing,
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as it appears in the string, without trailing whitespace.
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+row
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+cell lower / lower_
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+cell.
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The form of the word, but forced to lower-case, i.e.
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#[code lower = word.orth_.lower()]
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+row
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+cell shape / shape_
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+cell.
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A transform of the word's string, to show orthographic features.
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The characters a-z are mapped to x, A-Z is mapped to X, 0-9
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is mapped to d. After these mappings, sequences of 4 or more
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of the same character are truncated to length 4. Examples:
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C3Po --> XdXx, favorite --> xxxx, :) --> :)
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+row
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+cell prefix / prefix_
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+cell.
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A length-N substring from the start of the word. Length may
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vary by language; currently for English n=1, i.e.
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#[code prefix = word.orth_[:1]]
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+row
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+cell suffix / suffix_
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+cell.
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A length-N substring from the end of the word. Length may vary
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by language; currently for English n=3, i.e.
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#[code suffix = word.orth_[-3:]]
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+section("lexeme-booleanflags")
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+h(3, "lexeme-booleanflags")
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| Boolean Flags
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+table(["Name", "Description"])
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+row
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+cell is_alpha
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+cell Equivalent to #[code word.orth_.isalpha()]
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+row
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+cell is_ascii
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+cell Equivalent to any(ord(c) >= 128 for c in word.orth_)]
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+row
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+cell is_digit
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+cell Equivalent to #[code word.orth_.isdigit()]
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+row
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+cell is_lower
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+cell Equivalent to #[code word.orth_.islower()]
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+row
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+cell is_title
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+cell Equivalent to #[code word.orth_.istitle()]
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+row
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+cell is_punct
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+cell Equivalent to #[code word.orth_.ispunct()]
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+row
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+cell is_space
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+cell Equivalent to #[code word.orth_.isspace()]
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+row
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+cell like_url
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+cell Does the word resemble a URL?
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+row
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+cell like_num
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+cell Does the word represent a number? e.g. “10.9”, “10”, “ten”, etc.
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+row
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+cell like_email
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+cell Does the word resemble an email?
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+row
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+cell is_oov
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+cell Is the word out-of-vocabulary?
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+row
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+cell is_stop
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+cell.
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Is the word part of a "stop list"? Stop lists are used to
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improve the quality of topic models, by filtering out common,
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domain-general words.
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+section("lexeme-distributional")
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+h(3, "lexeme-distributional")
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| Distributional Features
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+table(["Name", "Description"])
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+row
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+cell prob
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+cell.
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The unigram log-probability of the word, estimated from
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counts from a large corpus, smoothed using Simple Good Turing
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estimation.
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+row
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+cell cluster
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+cell.
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The Brown cluster ID of the word. These are often useful features
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for linear models. If you’re using a non-linear model, particularly
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a neural net or random forest, consider using the real-valued
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word representation vector, in #[code Token.repvec], instead.
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+row
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+cell vector
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+cell.
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A "word embedding" representation: a dense real-valued vector
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that supports similarity queries between words. By default,
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spaCy currently loads vectors produced by the Levy and
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Goldberg (2014) dependency-based word2vec model.
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+row
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+cell has_vector
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+cell.
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A boolean value indicating whether a vector.
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