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title | teaser | tag | source |
---|---|---|---|
GoldParse | A collection for training annotations | class | spacy/gold.pyx |
GoldParse.__init__
Create a GoldParse
. Unlike annotations in entities
, label annotations in
cats
can overlap, i.e. a single word can be covered by multiple labelled
spans. The TextCategorizer
component expects true
examples of a label to have the value 1.0
, and negative examples of a label to
have the value 0.0
. Labels not in the dictionary are treated as missing – the
gradient for those labels will be zero.
Name | Type | Description |
---|---|---|
doc |
Doc |
The document the annotations refer to. |
words |
iterable | A sequence of unicode word strings. |
tags |
iterable | A sequence of strings, representing tag annotations. |
heads |
iterable | A sequence of integers, representing syntactic head offsets. |
deps |
iterable | A sequence of strings, representing the syntactic relation types. |
entities |
iterable | A sequence of named entity annotations, either as BILUO tag strings, or as (start_char, end_char, label) tuples, representing the entity positions. If BILUO tag strings, you can specify missing values by setting the tag to None. |
cats |
dict | Labels for text classification. Each key in the dictionary may be a string or an int, or a (start_char, end_char, label) tuple, indicating that the label is applied to only part of the document (usually a sentence). |
RETURNS | GoldParse |
The newly constructed object. |
GoldParse.__len__
Get the number of gold-standard tokens.
Name | Type | Description |
---|---|---|
RETURNS | int | The number of gold-standard tokens. |
GoldParse.is_projective
Whether the provided syntactic annotations form a projective dependency tree.
Name | Type | Description |
---|---|---|
RETURNS | bool | Whether annotations form projective tree. |
Attributes
Name | Type | Description |
---|---|---|
words |
list | The words. |
tags |
list | The part-of-speech tag annotations. |
heads |
list | The syntactic head annotations. |
labels |
list | The syntactic relation-type annotations. |
ner |
list | The named entity annotations as BILUO tags. |
cand_to_gold |
list | The alignment from candidate tokenization to gold tokenization. |
gold_to_cand |
list | The alignment from gold tokenization to candidate tokenization. |
cats 2 |
list | Entries in the list should be either a label, or a (start, end, label) triple. The tuple form is used for categories applied to spans of the document. |
Utilities
gold.docs_to_json
Convert a list of Doc objects into the
JSON-serializable format used by the
spacy train
command.
Example
from spacy.gold import docs_to_json doc = nlp(u"I like London") json_data = docs_to_json([doc])
Name | Type | Description |
---|---|---|
docs |
iterable / Doc |
The Doc object(s) to convert. |
id |
int | ID to assign to the JSON. Defaults to 0 . |
RETURNS | list | The data in spaCy's JSON format. |
gold.align
Calculate alignment tables between two tokenizations, using the Levenshtein algorithm. The alignment is case-insensitive.
The current implementation of the alignment algorithm assumes that both
tokenizations add up to the same string. For example, you'll be able to align
["I", "'", "m"]
and ["I", "'m"]
, which both add up to "I'm"
, but not
["I", "'m"]
and ["I", "am"]
.
Example
from spacy.gold import align bert_tokens = ["obama", "'", "s", "podcast"] spacy_tokens = ["obama", "'s", "podcast"] alignment = align(bert_tokens, spacy_tokens) cost, a2b, b2a, a2b_multi, b2a_multi = alignment
Name | Type | Description |
---|---|---|
tokens_a |
list | String values of candidate tokens to align. |
tokens_b |
list | String values of reference tokens to align. |
RETURNS | tuple | A (cost, a2b, b2a, a2b_multi, b2a_multi) tuple describing the alignment. |
The returned tuple contains the following alignment information:
Example
a2b = array([0, -1, -1, 2]) b2a = array([0, 2, 3]) a2b_multi = {1: 1, 2: 1} b2a_multi = {}
If
a2b[3] == 2
, that means thattokens_a[3]
aligns totokens_b[2]
. If there's no one-to-one alignment for a token, it has the value-1
.
Name | Type | Description |
---|---|---|
cost |
int | The number of misaligned tokens. |
a2b |
numpy.ndarray[ndim=1, dtype='int32'] |
One-to-one mappings of indices in tokens_a to indices in tokens_b . |
b2a |
numpy.ndarray[ndim=1, dtype='int32'] |
One-to-one mappings of indices in tokens_b to indices in tokens_a . |
a2b_multi |
dict | A dictionary mapping indices in tokens_a to indices in tokens_b , where multiple tokens of tokens_a align to the same token of tokens_b . |
b2a_multi |
dict | A dictionary mapping indices in tokens_b to indices in tokens_a , where multiple tokens of tokens_b align to the same token of tokens_a . |
gold.biluo_tags_from_offsets
Encode labelled spans into per-token tags, using the
BILUO scheme (Begin, In, Last, Unit, Out). Returns a
list of unicode strings, describing the tags. Each tag string will be of the
form of either ""
, "O"
or "{action}-{label}"
, where action is one of
"B"
, "I"
, "L"
, "U"
. The string "-"
is used where the entity offsets
don't align with the tokenization in the Doc
object. The training algorithm
will view these as missing values. O
denotes a non-entity token. B
denotes
the beginning of a multi-token entity, I
the inside of an entity of three or
more tokens, and L
the end of an entity of two or more tokens. U
denotes a
single-token entity.
Example
from spacy.gold import biluo_tags_from_offsets doc = nlp(u"I like London.") entities = [(7, 13, "LOC")] tags = biluo_tags_from_offsets(doc, entities) assert tags == ["O", "O", "U-LOC", "O"]
Name | Type | Description |
---|---|---|
doc |
Doc |
The document that the entity offsets refer to. The output tags will refer to the token boundaries within the document. |
entities |
iterable | A sequence of (start, end, label) triples. start and end should be character-offset integers denoting the slice into the original string. |
RETURNS | list | Unicode strings, describing the BILUO tags. |
gold.offsets_from_biluo_tags
Encode per-token tags following the BILUO scheme into entity offsets.
Example
from spacy.gold import offsets_from_biluo_tags doc = nlp(u"I like London.") tags = ["O", "O", "U-LOC", "O"] entities = offsets_from_biluo_tags(doc, tags) assert entities == [(7, 13, "LOC")]
Name | Type | Description |
---|---|---|
doc |
Doc |
The document that the BILUO tags refer to. |
entities |
iterable | A sequence of BILUO tags with each tag describing one token. Each tag string will be of the form of either "" , "O" or "{action}-{label}" , where action is one of "B" , "I" , "L" , "U" . |
RETURNS | list | A sequence of (start, end, label) triples. start and end will be character-offset integers denoting the slice into the original string. |
gold.spans_from_biluo_tags
Encode per-token tags following the BILUO scheme into
Span
objects. This can be used to create entity spans from
token-based tags, e.g. to overwrite the doc.ents
.
Example
from spacy.gold import spans_from_biluo_tags doc = nlp(u"I like London.") tags = ["O", "O", "U-LOC", "O"] doc.ents = spans_from_biluo_tags(doc, tags)
Name | Type | Description |
---|---|---|
doc |
Doc |
The document that the BILUO tags refer to. |
entities |
iterable | A sequence of BILUO tags with each tag describing one token. Each tag string will be of the form of either "" , "O" or "{action}-{label}" , where action is one of "B" , "I" , "L" , "U" . |
RETURNS | list | A sequence of Span objects with added entity labels. |