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Data formats | Details on spaCy's input and output data formats |
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This section documents input and output formats of data used by spaCy, including training data and lexical vocabulary data. For an overview of label schemes used by the models, see the models directory. Each model documents the label schemes used in its components, depending on the data it was trained on.
Training data
Binary training format
JSON input format for training
spaCy takes training data in JSON format. The built-in
convert
command helps you convert the .conllu
format
used by the
Universal Dependencies corpora to
spaCy's training format. To convert one or more existing Doc
objects to
spaCy's JSON format, you can use the
gold.docs_to_json
helper.
Annotating entities
Named entities are provided in the BILUO notation. Tokens outside an entity are set to
"O"
and tokens that are part of an entity are set to the entity label, prefixed by the BILUO marker. For example"B-ORG"
describes the first token of a multi-tokenORG
entity and"U-PERSON"
a single token representing aPERSON
entity. Thebiluo_tags_from_offsets
function can help you convert entity offsets to the right format.
### Example structure
[{
"id": int, # ID of the document within the corpus
"paragraphs": [{ # list of paragraphs in the corpus
"raw": string, # raw text of the paragraph
"sentences": [{ # list of sentences in the paragraph
"tokens": [{ # list of tokens in the sentence
"id": int, # index of the token in the document
"dep": string, # dependency label
"head": int, # offset of token head relative to token index
"tag": string, # part-of-speech tag
"orth": string, # verbatim text of the token
"ner": string # BILUO label, e.g. "O" or "B-ORG"
}],
"brackets": [{ # phrase structure (NOT USED by current models)
"first": int, # index of first token
"last": int, # index of last token
"label": string # phrase label
}]
}],
"cats": [{ # new in v2.2: categories for text classifier
"label": string, # text category label
"value": float / bool # label applies (1.0/true) or not (0.0/false)
}]
}]
}]
Here's an example of dependencies, part-of-speech tags and names entities, taken from the English Wall Street Journal portion of the Penn Treebank:
https://github.com/explosion/spaCy/tree/master/examples/training/training-data.json
Training config
Config files define the training process and model pipeline and can be passed to
spacy train
. They use
Thinc's configuration system under the
hood. For details on how to use training configs, see the
usage documentation.
The @
syntax lets you refer to function names registered in the
function registry. For example,
@architectures = "spacy.HashEmbedCNN.v1"
refers to a registered function of
the name "spacy.HashEmbedCNN.v1"
and all other values defined in its block
will be passed into that function as arguments. Those arguments depend on the
registered function. See the model architectures docs for
API details.
Lexical data for vocabulary
To populate a model's vocabulary, you can use the
spacy init-model
command and load in a
newline-delimited JSON (JSONL) file containing one
lexical entry per line via the --jsonl-loc
option. The first line defines the
language and vocabulary settings. All other lines are expected to be JSON
objects describing an individual lexeme. The lexical attributes will be then set
as attributes on spaCy's Lexeme
object. The vocab
command outputs a ready-to-use spaCy model with a Vocab
containing the lexical
data.
### First line
{"lang": "en", "settings": {"oov_prob": -20.502029418945312}}
### Entry structure
{
"orth": string, # the word text
"id": int, # can correspond to row in vectors table
"lower": string,
"norm": string,
"shape": string
"prefix": string,
"suffix": string,
"length": int,
"cluster": string,
"prob": float,
"is_alpha": bool,
"is_ascii": bool,
"is_digit": bool,
"is_lower": bool,
"is_punct": bool,
"is_space": bool,
"is_title": bool,
"is_upper": bool,
"like_url": bool,
"like_num": bool,
"like_email": bool,
"is_stop": bool,
"is_oov": bool,
"is_quote": bool,
"is_left_punct": bool,
"is_right_punct": bool
}
Here's an example of the 20 most frequent lexemes in the English training data:
https://github.com/explosion/spaCy/tree/master/examples/training/vocab-data.jsonl