mirror of https://github.com/explosion/spaCy.git
168 lines
5.8 KiB
Plaintext
168 lines
5.8 KiB
Plaintext
//- ----------------------------------
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//- 💫 DOCS > ANNOTATION SPECS
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//- ----------------------------------
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+section("annotation")
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+h(2, "annotation").
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Annotation Specifications
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p.
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This document describes the target annotations spaCy is trained to predict.
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This is currently a work in progress. Please ask questions on the
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#[+a("https://github.com/" + SOCIAL.github + "/spaCy/issues") issue tracker],
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so that the answers can be integrated here to improve the documentation.
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+section("annotation-tokenization")
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+h(3, "annotation-tokenization").
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Tokenization
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p.
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Tokenization standards are based on the OntoNotes 5 corpus. The
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tokenizer differs from most by including tokens for significant
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whitespace. Any sequence of whitespace characters beyond a single
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space (' ') is included as a token. For instance:
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+code.
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from spacy.en import English
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nlp = English(parser=False)
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tokens = nlp('Some\nspaces and\ttab characters')
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print([t.orth_ for t in tokens])
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p Which produces:
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+code.
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['Some', '\n', 'spaces', ' ', 'and', '\t', 'tab', 'characters']
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p.
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The whitespace tokens are useful for much the same reason punctuation
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is – it's often an important delimiter in the text. By preserving it
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in the token output, we are able to maintain a simple alignment between
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the tokens and the original string, and we ensure that no information
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is lost during processing.
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+section("annotation-sentence-boundary")
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+h(3, "annotation-sentence-boundary").
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Sentence boundary detection
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p.
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Sentence boundaries are calculated from the syntactic parse tree, so
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features such as punctuation and capitalisation play an important but
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non-decisive role in determining the sentence boundaries. Usually
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this means that the sentence boundaries will at least coincide with
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clause boundaries, even given poorly punctuated text.
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+section("annotation-pos-tagging")
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+h(3, "annotation-pos-tagging").
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Part-of-speech Tagging
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p.
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The part-of-speech tagger uses the OntoNotes 5 version of the Penn
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Treebank tag set. We also map the tags to the simpler Google Universal
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POS Tag set. Details #[+a("https://github.com/" + SOCIAL.github + "/spaCy/blob/master/spacy/tagger.pyx") here].
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+section("annotation-lemmatization")
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+h(3, "annotation-lemmatization").
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Lemmatization
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p A "lemma" is the uninflected form of a word. In English, this means:
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+list
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+item #[strong Adjectives:] The form like "happy", not "happier" or "happiest"
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+item #[strong Adverbs:] The form like "badly", not "worse" or "worst"
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+item #[strong Nouns:] The form like "dog", not "dogs"; like "child", not "children"
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+item #[strong Verbs:] The form like "write", not "writes", "writing", "wrote" or "written"
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p.
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The lemmatization data is taken from WordNet. However, we also add a
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special case for pronouns: all pronouns are lemmatized to the special
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token #[code -PRON-].
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+section("annotation-dependency")
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+h(3, "annotation-dependency").
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Syntactic Dependency Parsing
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p.
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The parser is trained on data produced by the ClearNLP converter.
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Details of the annotation scheme can be found
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#[+a("http://www.mathcs.emory.edu/~choi/doc/clear-dependency-2012.pdf") here].
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+section("annotation-ner")
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+h(3, "annotation-ner").
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Named Entity Recognition
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+table(["Entity Type", "Description"])
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+row
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+cell PERSON
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+cell People, including fictional.
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+row
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+cell NORP
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+cell Nationalities or religious or political groups.
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+row
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+cell FAC
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+cell Facilities, such as buildings, airports, highways, bridges, etc.
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+row
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+cell ORG
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+cell Companies, agencies, institutions, etc.
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+row
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+cell GPE
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+cell Countries, cities, states.
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+row
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+cell LOC
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+cell Non-GPE locations, mountain ranges, bodies of water.
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+row
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+cell PRODUCT
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+cell Vehicles, weapons, foods, etc. (Not services)
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+row
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+cell EVENT
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+cell Named hurricanes, battles, wars, sports events, etc.
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+row
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+cell WORK_OF_ART
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+cell Titles of books, songs, etc.
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+row
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+cell LAW
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+cell Named documents made into laws
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+row
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+cell LANGUAGE
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+cell Any named language
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p The following values are also annotated in a style similar to names:
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+table(["Entity Type", "Description"])
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+row
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+cell DATE
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+cell Absolute or relative dates or periods
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+row
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+cell TIME
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+cell Times smaller than a day
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+row
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+cell PERCENT
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+cell Percentage (including “%”)
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+row
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+cell MONEY
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+cell Monetary values, including unit
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+row
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+cell QUANTITY
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+cell Measurements, as of weight or distance
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+row
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+cell ORDINAL
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+cell "first", "second"
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+row
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+cell CARDINAL
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+cell Numerals that do not fall under another type
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