spaCy/spacy/gold/new_example.pyx

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import numpy
from ..tokens.doc cimport Doc
from ..attrs import IDS
from .align cimport Alignment
from .annotation import TokenAnnotation, DocAnnotation
from .iob_utils import biluo_to_iob, biluo_tags_from_offsets
from .align import Alignment
from ..errors import Errors, AlignmentError
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cpdef Doc annotations2doc(Doc predicted, tok_annot, doc_annot):
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# TODO: Improve and test this
words = tok_annot.get("ORTH", [tok.text for tok in predicted])
attrs, array = _annot2array(predicted.vocab.strings, tok_annot, doc_annot)
output = Doc(predicted.vocab, words=words)
if array.size:
output = output.from_array(attrs, array)
output.cats.update(doc_annot.get("cats", {}))
return output
cdef class NewExample:
def __init__(self, Doc predicted, Doc reference, *, Alignment alignment=None):
""" Doc can either be text, or an actual Doc """
msg = "Example.__init__ got None for '{arg}'. Requires Doc."
if predicted is None:
raise TypeError(msg.format(arg="predicted"))
if reference is None:
raise TypeError(msg.format(arg="reference"))
self.x = predicted
self.y = reference
self._alignment = alignment
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property predicted:
def __get__(self):
return self.x
def __set__(self, doc):
self.x = doc
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property reference:
def __get__(self):
return self.y
def __set__(self, doc):
self.y = doc
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@classmethod
def from_dict(cls, Doc predicted, dict example_dict):
if example_dict is None:
raise ValueError("Example.from_dict expected dict, received None")
if not isinstance(predicted, Doc):
raise TypeError(f"Argument 1 should be Doc. Got {type(predicted)}")
example_dict = _fix_legacy_dict_data(predicted, example_dict)
tok_dict, doc_dict = _parse_example_dict_data(example_dict)
return NewExample(
predicted,
annotations2doc(predicted, tok_dict, doc_dict)
)
@property
def alignment(self):
if self._alignment is None:
if self.doc is None:
return None
spacy_words = [token.orth_ for token in self.predicted]
gold_words = [token.orth_ for token in self.reference]
if gold_words == []:
gold_words = spacy_words
self._alignment = Alignment(spacy_words, gold_words)
return self._alignment
def get_aligned(self, field):
raise NotImplementedError
def to_dict(self):
""" Note that this method does NOT export the doc, only the annotations ! """
token_dict = self._token_annotation
doc_dict = self._doc_annotation
return {"token_annotation": token_dict, "doc_annotation": doc_dict}
def text(self):
return self.x.text
def _annot2array(strings, tok_annot, doc_annot):
attrs = []
values = []
for key, value in tok_annot.items():
if key not in IDS:
raise ValueError(f"Unknown attr: {key}")
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elif key == "ORTH":
pass
elif key == "HEAD":
attrs.append(key)
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values.append([h-i for i, h in enumerate(value)])
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elif key == "SENT_START":
attrs.append(key)
values.append(value)
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else:
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attrs.append(key)
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values.append([strings.add(v) for v in value])
# TODO: Calculate token.ent_kb_id from doc_annot["links"].
# We need to fix this and the doc.ents thing, both should be doc
# annotations.
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array = numpy.asarray(values, dtype="uint64")
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return attrs, array.T
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def _parse_example_dict_data(example_dict):
return (
example_dict["token_annotation"],
example_dict["doc_annotation"]
)
def _fix_legacy_dict_data(predicted, example_dict):
token_dict = example_dict.get("token_annotation", {})
doc_dict = example_dict.get("doc_annotation", {})
for key, value in example_dict.items():
if key in ("token_annotation", "doc_annotation"):
pass
elif key in ("cats", "links"):
doc_dict[key] = value
else:
token_dict[key] = value
# Remap keys
remapping = {
"words": "ORTH",
"tags": "TAG",
"pos": "POS",
"lemmas": "LEMMA",
"deps": "DEP",
"heads": "HEAD",
"sent_starts": "SENT_START",
"morphs": "MORPH",
}
old_token_dict = token_dict
token_dict = {}
for key, value in old_token_dict.items():
if key in remapping:
token_dict[remapping[key]] = value
elif key in ("ner", "entities") and value:
# Arguably it would be smarter to put this in the doc annotation?
words = token_dict.get("words", [t.text for t in predicted])
ent_iobs, ent_types = _parse_ner_tags(predicted, words, value)
token_dict["ENT_IOB"] = ent_iobs
token_dict["ENT_TYPE"] = ent_types
else:
raise ValueError(f"Unknown attr: {key}")
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return {
"token_annotation": token_dict,
"doc_annotation": doc_dict
}
def _parse_ner_tags(predicted, words, biluo_or_offsets):
if isinstance(biluo_or_offsets[0], (list, tuple)):
# Convert to biluo if necessary
# This is annoying but to convert the offsets we need a Doc
# that has the target tokenization.
reference = Doc(
predicted.vocab,
words=words
)
biluo = biluo_tags_from_offsets(predicted, biluo_or_offsets)
else:
biluo = biluo_or_offsets
ent_iobs = []
ent_types = []
for iob_tag in biluo_to_iob(biluo):
ent_iobs.append(iob_tag.split("-")[0])
if iob_tag.startswith("I") or iob_tag.startswith("B"):
ent_types.append(iob_tag.split("-", 1)[1])
else:
ent_types.append("")
return ent_iobs, ent_types
class Example:
def get_aligned(self, field):
"""Return an aligned array for a token annotation field."""
if self.doc is None:
return self.token_annotation.get_field(field)
doc = self.doc
if field == "word":
return [token.orth_ for token in doc]
gold_values = self.token_annotation.get_field(field)
alignment = self.alignment
i2j_multi = alignment.i2j_multi
gold_to_cand = alignment.gold_to_cand
cand_to_gold = alignment.cand_to_gold
output = []
for i, gold_i in enumerate(cand_to_gold):
if doc[i].text.isspace():
output.append(None)
elif gold_i is None:
if i in i2j_multi:
output.append(gold_values[i2j_multi[i]])
else:
output.append(None)
else:
output.append(gold_values[gold_i])
return output
def split_sents(self):
""" Split the token annotations into multiple Examples based on
sent_starts and return a list of the new Examples"""
if not self.token_annotation.words:
return [self]
s_ids, s_words, s_tags, s_pos, s_morphs = [], [], [], [], []
s_lemmas, s_heads, s_deps, s_ents, s_sent_starts = [], [], [], [], []
s_brackets = []
sent_start_i = 0
t = self.token_annotation
split_examples = []
for i in range(len(t.words)):
if i > 0 and t.sent_starts[i] == 1:
split_examples.append(
Example(
doc=Doc(self.doc.vocab, words=s_words),
token_annotation=TokenAnnotation(
ids=s_ids,
words=s_words,
tags=s_tags,
pos=s_pos,
morphs=s_morphs,
lemmas=s_lemmas,
heads=s_heads,
deps=s_deps,
entities=s_ents,
sent_starts=s_sent_starts,
brackets=s_brackets,
),
doc_annotation=self.doc_annotation
)
)
s_ids, s_words, s_tags, s_pos, s_heads = [], [], [], [], []
s_deps, s_ents, s_morphs, s_lemmas = [], [], [], []
s_sent_starts, s_brackets = [], []
sent_start_i = i
s_ids.append(t.get_id(i))
s_words.append(t.get_word(i))
s_tags.append(t.get_tag(i))
s_pos.append(t.get_pos(i))
s_morphs.append(t.get_morph(i))
s_lemmas.append(t.get_lemma(i))
s_heads.append(t.get_head(i) - sent_start_i)
s_deps.append(t.get_dep(i))
s_ents.append(t.get_entity(i))
s_sent_starts.append(t.get_sent_start(i))
for b_end, b_label in t.brackets_by_start.get(i, []):
s_brackets.append((i - sent_start_i, b_end - sent_start_i, b_label))
i += 1
split_examples.append(
Example(
doc=Doc(self.doc.vocab, words=s_words),
token_annotation=TokenAnnotation(
ids=s_ids,
words=s_words,
tags=s_tags,
pos=s_pos,
morphs=s_morphs,
lemmas=s_lemmas,
heads=s_heads,
deps=s_deps,
entities=s_ents,
sent_starts=s_sent_starts,
brackets=s_brackets,
),
doc_annotation=self.doc_annotation
)
)
return split_examples
@classmethod
def to_example_objects(cls, examples, make_doc=None, keep_raw_text=False):
"""
Return a list of Example objects, from a variety of input formats.
make_doc needs to be provided when the examples contain text strings and keep_raw_text=False
"""
if isinstance(examples, Example):
return [examples]
if isinstance(examples, tuple):
examples = [examples]
converted_examples = []
for ex in examples:
if isinstance(ex, Example):
converted_examples.append(ex)
# convert string to Doc to Example
elif isinstance(ex, str):
if keep_raw_text:
converted_examples.append(Example(doc=ex))
else:
doc = make_doc(ex)
converted_examples.append(Example(doc=doc))
# convert tuples to Example
elif isinstance(ex, tuple) and len(ex) == 2:
doc, gold = ex
# convert string to Doc
if isinstance(doc, str) and not keep_raw_text:
doc = make_doc(doc)
converted_examples.append(Example.from_dict(gold, doc=doc))
# convert Doc to Example
elif isinstance(ex, Doc):
converted_examples.append(Example(doc=ex))
else:
converted_examples.append(ex)
return converted_examples
def _deprecated_get_gold(self, make_projective=False):
from ..syntax.gold_parse import get_parses_from_example
_, gold = get_parses_from_example(self, make_projective=make_projective)[0]
return gold