mirror of
https://github.com/explosion/spaCy.git
synced 2024-11-15 06:09:01 +03:00
eaeca5eb6a
* account for NER labels with a hyphen in the name * cleanup * fix docstring * add return type to helper method * shorter method and few more occurrences * user helper method across repo * fix circular import * partial revert to avoid circular import
338 lines
12 KiB
Python
338 lines
12 KiB
Python
from typing import Callable, Iterator, Dict, List, Tuple, TYPE_CHECKING
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from typing import Optional
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import random
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import itertools
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from functools import partial
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from ..util import registry
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from .example import Example
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from .iob_utils import split_bilu_label
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if TYPE_CHECKING:
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from ..language import Language # noqa: F401
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@registry.augmenters("spacy.combined_augmenter.v1")
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def create_combined_augmenter(
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lower_level: float,
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orth_level: float,
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orth_variants: Optional[Dict[str, List[Dict]]],
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whitespace_level: float,
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whitespace_per_token: float,
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whitespace_variants: Optional[List[str]],
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) -> Callable[["Language", Example], Iterator[Example]]:
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"""Create a data augmentation callback that uses orth-variant replacement.
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The callback can be added to a corpus or other data iterator during training.
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lower_level (float): The percentage of texts that will be lowercased.
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orth_level (float): The percentage of texts that will be augmented.
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orth_variants (Optional[Dict[str, List[Dict]]]): A dictionary containing the
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single and paired orth variants. Typically loaded from a JSON file.
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whitespace_level (float): The percentage of texts that will have whitespace
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tokens inserted.
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whitespace_per_token (float): The number of whitespace tokens to insert in
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the modified doc as a percentage of the doc length.
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whitespace_variants (Optional[List[str]]): The whitespace token texts.
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RETURNS (Callable[[Language, Example], Iterator[Example]]): The augmenter.
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"""
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return partial(
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combined_augmenter,
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lower_level=lower_level,
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orth_level=orth_level,
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orth_variants=orth_variants,
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whitespace_level=whitespace_level,
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whitespace_per_token=whitespace_per_token,
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whitespace_variants=whitespace_variants,
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)
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def combined_augmenter(
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nlp: "Language",
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example: Example,
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*,
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lower_level: float = 0.0,
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orth_level: float = 0.0,
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orth_variants: Optional[Dict[str, List[Dict]]] = None,
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whitespace_level: float = 0.0,
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whitespace_per_token: float = 0.0,
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whitespace_variants: Optional[List[str]] = None,
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) -> Iterator[Example]:
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if random.random() < lower_level:
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example = make_lowercase_variant(nlp, example)
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if orth_variants and random.random() < orth_level:
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raw_text = example.text
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orig_dict = example.to_dict()
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variant_text, variant_token_annot = make_orth_variants(
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nlp,
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raw_text,
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orig_dict["token_annotation"],
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orth_variants,
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lower=False,
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)
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orig_dict["token_annotation"] = variant_token_annot
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example = example.from_dict(nlp.make_doc(variant_text), orig_dict)
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if whitespace_variants and random.random() < whitespace_level:
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for _ in range(int(len(example.reference) * whitespace_per_token)):
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example = make_whitespace_variant(
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nlp,
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example,
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random.choice(whitespace_variants),
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random.randrange(0, len(example.reference)),
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)
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yield example
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@registry.augmenters("spacy.orth_variants.v1")
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def create_orth_variants_augmenter(
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level: float, lower: float, orth_variants: Dict[str, List[Dict]]
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) -> Callable[["Language", Example], Iterator[Example]]:
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"""Create a data augmentation callback that uses orth-variant replacement.
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The callback can be added to a corpus or other data iterator during training.
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level (float): The percentage of texts that will be augmented.
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lower (float): The percentage of texts that will be lowercased.
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orth_variants (Dict[str, List[Dict]]): A dictionary containing
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the single and paired orth variants. Typically loaded from a JSON file.
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RETURNS (Callable[[Language, Example], Iterator[Example]]): The augmenter.
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"""
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return partial(
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orth_variants_augmenter, orth_variants=orth_variants, level=level, lower=lower
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)
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@registry.augmenters("spacy.lower_case.v1")
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def create_lower_casing_augmenter(
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level: float,
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) -> Callable[["Language", Example], Iterator[Example]]:
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"""Create a data augmentation callback that converts documents to lowercase.
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The callback can be added to a corpus or other data iterator during training.
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level (float): The percentage of texts that will be augmented.
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RETURNS (Callable[[Language, Example], Iterator[Example]]): The augmenter.
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"""
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return partial(lower_casing_augmenter, level=level)
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def dont_augment(nlp: "Language", example: Example) -> Iterator[Example]:
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yield example
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def lower_casing_augmenter(
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nlp: "Language", example: Example, *, level: float
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) -> Iterator[Example]:
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if random.random() >= level:
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yield example
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else:
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yield make_lowercase_variant(nlp, example)
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def make_lowercase_variant(nlp: "Language", example: Example):
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example_dict = example.to_dict()
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doc = nlp.make_doc(example.text.lower())
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example_dict["token_annotation"]["ORTH"] = [t.lower_ for t in example.reference]
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return example.from_dict(doc, example_dict)
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def orth_variants_augmenter(
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nlp: "Language",
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example: Example,
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orth_variants: Dict[str, List[Dict]],
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*,
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level: float = 0.0,
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lower: float = 0.0,
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) -> Iterator[Example]:
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if random.random() >= level:
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yield example
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else:
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raw_text = example.text
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orig_dict = example.to_dict()
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variant_text, variant_token_annot = make_orth_variants(
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nlp,
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raw_text,
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orig_dict["token_annotation"],
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orth_variants,
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lower=raw_text is not None and random.random() < lower,
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)
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orig_dict["token_annotation"] = variant_token_annot
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yield example.from_dict(nlp.make_doc(variant_text), orig_dict)
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def make_orth_variants(
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nlp: "Language",
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raw: str,
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token_dict: Dict[str, List[str]],
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orth_variants: Dict[str, List[Dict[str, List[str]]]],
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*,
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lower: bool = False,
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) -> Tuple[str, Dict[str, List[str]]]:
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words = token_dict.get("ORTH", [])
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tags = token_dict.get("TAG", [])
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# keep unmodified if words are not defined
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if not words:
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return raw, token_dict
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if lower:
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words = [w.lower() for w in words]
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raw = raw.lower()
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# if no tags, only lowercase
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if not tags:
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token_dict["ORTH"] = words
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return raw, token_dict
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# single variants
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ndsv = orth_variants.get("single", [])
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punct_choices = [random.choice(x["variants"]) for x in ndsv]
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for word_idx in range(len(words)):
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for punct_idx in range(len(ndsv)):
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if (
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tags[word_idx] in ndsv[punct_idx]["tags"]
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and words[word_idx] in ndsv[punct_idx]["variants"]
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):
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words[word_idx] = punct_choices[punct_idx]
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# paired variants
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ndpv = orth_variants.get("paired", [])
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punct_choices = [random.choice(x["variants"]) for x in ndpv]
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for word_idx in range(len(words)):
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for punct_idx in range(len(ndpv)):
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if tags[word_idx] in ndpv[punct_idx]["tags"] and words[
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word_idx
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] in itertools.chain.from_iterable(ndpv[punct_idx]["variants"]):
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# backup option: random left vs. right from pair
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pair_idx = random.choice([0, 1])
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# best option: rely on paired POS tags like `` / ''
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if len(ndpv[punct_idx]["tags"]) == 2:
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pair_idx = ndpv[punct_idx]["tags"].index(tags[word_idx])
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# next best option: rely on position in variants
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# (may not be unambiguous, so order of variants matters)
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else:
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for pair in ndpv[punct_idx]["variants"]:
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if words[word_idx] in pair:
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pair_idx = pair.index(words[word_idx])
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words[word_idx] = punct_choices[punct_idx][pair_idx]
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token_dict["ORTH"] = words
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raw = construct_modified_raw_text(token_dict)
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return raw, token_dict
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def make_whitespace_variant(
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nlp: "Language",
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example: Example,
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whitespace: str,
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position: int,
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) -> Example:
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"""Insert the whitespace token at the specified token offset in the doc.
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This is primarily intended for v2-compatible training data that doesn't
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include links or spans. If the document includes links, spans, or partial
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dependency annotation, it is returned without modifications.
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The augmentation follows the basics of the v2 space attachment policy, but
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without a distinction between "real" and other tokens, so space tokens
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may be attached to space tokens:
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- at the beginning of a sentence attach the space token to the following
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token
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- otherwise attach the space token to the preceding token
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The augmenter does not attempt to consolidate adjacent whitespace in the
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same way that the tokenizer would.
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The following annotation is used for the space token:
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TAG: "_SP"
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MORPH: ""
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POS: "SPACE"
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LEMMA: ORTH
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DEP: "dep"
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SENT_START: False
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The annotation for each attribute is only set for the space token if there
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is already at least partial annotation for that attribute in the original
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example.
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RETURNS (Example): Example with one additional space token.
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"""
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example_dict = example.to_dict()
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doc_dict = example_dict.get("doc_annotation", {})
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token_dict = example_dict.get("token_annotation", {})
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# returned unmodified if:
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# - doc is empty
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# - words are not defined
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# - links are defined (only character-based offsets, which is more a quirk
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# of Example.to_dict than a technical constraint)
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# - spans are defined
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# - there are partial dependencies
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if (
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len(example.reference) == 0
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or "ORTH" not in token_dict
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or len(doc_dict.get("links", [])) > 0
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or len(example.reference.spans) > 0
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or (
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example.reference.has_annotation("DEP")
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and not example.reference.has_annotation("DEP", require_complete=True)
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)
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):
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return example
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words = token_dict.get("ORTH", [])
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length = len(words)
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assert 0 <= position <= length
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if example.reference.has_annotation("ENT_TYPE"):
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# I-ENTITY if between B/I-ENTITY and I/L-ENTITY otherwise O
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entity = "O"
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if position > 1 and position < length:
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ent_prev = doc_dict["entities"][position - 1]
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ent_next = doc_dict["entities"][position]
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if "-" in ent_prev and "-" in ent_next:
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ent_iob_prev, ent_type_prev = split_bilu_label(ent_prev)
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ent_iob_next, ent_type_next = split_bilu_label(ent_next)
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if (
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ent_iob_prev in ("B", "I")
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and ent_iob_next in ("I", "L")
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and ent_type_prev == ent_type_next
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):
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entity = f"I-{ent_type_prev}"
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doc_dict["entities"].insert(position, entity)
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else:
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del doc_dict["entities"]
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token_dict["ORTH"].insert(position, whitespace)
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token_dict["SPACY"].insert(position, False)
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if example.reference.has_annotation("TAG"):
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token_dict["TAG"].insert(position, "_SP")
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else:
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del token_dict["TAG"]
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if example.reference.has_annotation("LEMMA"):
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token_dict["LEMMA"].insert(position, whitespace)
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else:
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del token_dict["LEMMA"]
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if example.reference.has_annotation("POS"):
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token_dict["POS"].insert(position, "SPACE")
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else:
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del token_dict["POS"]
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if example.reference.has_annotation("MORPH"):
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token_dict["MORPH"].insert(position, "")
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else:
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del token_dict["MORPH"]
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if example.reference.has_annotation("DEP", require_complete=True):
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if position == 0:
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token_dict["HEAD"].insert(position, 0)
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else:
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token_dict["HEAD"].insert(position, position - 1)
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for i in range(len(token_dict["HEAD"])):
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if token_dict["HEAD"][i] >= position:
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token_dict["HEAD"][i] += 1
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token_dict["DEP"].insert(position, "dep")
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else:
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del token_dict["HEAD"]
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del token_dict["DEP"]
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if example.reference.has_annotation("SENT_START"):
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token_dict["SENT_START"].insert(position, False)
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else:
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del token_dict["SENT_START"]
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raw = construct_modified_raw_text(token_dict)
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return Example.from_dict(nlp.make_doc(raw), example_dict)
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def construct_modified_raw_text(token_dict):
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"""Construct modified raw text from words and spaces."""
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raw = ""
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for orth, spacy in zip(token_dict["ORTH"], token_dict["SPACY"]):
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raw += orth
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if spacy:
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raw += " "
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return raw
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