mirror of https://github.com/explosion/spaCy.git
350 lines
12 KiB
Python
350 lines
12 KiB
Python
import re
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from ...gold import Example
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from ...gold import iob_to_biluo, spans_from_biluo_tags, biluo_tags_from_offsets
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from ...language import Language
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from ...tokens import Doc, Token
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from .conll_ner2json import n_sents_info
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from wasabi import Printer
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def conllu2json(
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input_data,
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n_sents=10,
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append_morphology=False,
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lang=None,
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ner_map=None,
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merge_subtokens=False,
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no_print=False,
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**_
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):
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"""
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Convert conllu files into JSON format for use with train cli.
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append_morphology parameter enables appending morphology to tags, which is
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useful for languages such as Spanish, where UD tags are not so rich.
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Extract NER tags if available and convert them so that they follow
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BILUO and the Wikipedia scheme
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"""
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MISC_NER_PATTERN = "^((?:name|NE)=)?([BILU])-([A-Z_]+)|O$"
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msg = Printer(no_print=no_print)
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n_sents_info(msg, n_sents)
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docs = []
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raw = ""
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sentences = []
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conll_data = read_conllx(
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input_data,
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append_morphology=append_morphology,
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ner_tag_pattern=MISC_NER_PATTERN,
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ner_map=ner_map,
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merge_subtokens=merge_subtokens,
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)
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has_ner_tags = has_ner(input_data, MISC_NER_PATTERN)
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for i, example in enumerate(conll_data):
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raw += example.text
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sentences.append(
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generate_sentence(
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example.token_annotation,
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has_ner_tags,
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MISC_NER_PATTERN,
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ner_map=ner_map,
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)
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)
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# Real-sized documents could be extracted using the comments on the
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# conllu document
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if len(sentences) % n_sents == 0:
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doc = create_json_doc(raw, sentences, i)
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docs.append(doc)
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raw = ""
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sentences = []
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if sentences:
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doc = create_json_doc(raw, sentences, i)
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docs.append(doc)
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return docs
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def has_ner(input_data, ner_tag_pattern):
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"""
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Check the MISC column for NER tags.
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"""
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for sent in input_data.strip().split("\n\n"):
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lines = sent.strip().split("\n")
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if lines:
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while lines[0].startswith("#"):
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lines.pop(0)
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for line in lines:
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parts = line.split("\t")
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id_, word, lemma, pos, tag, morph, head, dep, _1, misc = parts
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for misc_part in misc.split("|"):
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if re.match(ner_tag_pattern, misc_part):
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return True
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return False
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def read_conllx(
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input_data,
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append_morphology=False,
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merge_subtokens=False,
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ner_tag_pattern="",
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ner_map=None,
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):
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""" Yield examples, one for each sentence """
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vocab = Language.Defaults.create_vocab() # need vocab to make a minimal Doc
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for sent in input_data.strip().split("\n\n"):
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lines = sent.strip().split("\n")
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if lines:
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while lines[0].startswith("#"):
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lines.pop(0)
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example = example_from_conllu_sentence(
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vocab,
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lines,
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ner_tag_pattern,
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merge_subtokens=merge_subtokens,
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append_morphology=append_morphology,
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ner_map=ner_map,
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)
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yield example
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def get_entities(lines, tag_pattern, ner_map=None):
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"""Find entities in the MISC column according to the pattern and map to
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final entity type with `ner_map` if mapping present. Entity tag is 'O' if
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the pattern is not matched.
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lines (str): CONLL-U lines for one sentences
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tag_pattern (str): Regex pattern for entity tag
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ner_map (dict): Map old NER tag names to new ones, '' maps to O.
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RETURNS (list): List of BILUO entity tags
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"""
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miscs = []
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for line in lines:
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parts = line.split("\t")
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id_, word, lemma, pos, tag, morph, head, dep, _1, misc = parts
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if "-" in id_ or "." in id_:
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continue
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miscs.append(misc)
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iob = []
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for misc in miscs:
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iob_tag = "O"
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for misc_part in misc.split("|"):
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tag_match = re.match(tag_pattern, misc_part)
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if tag_match:
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prefix = tag_match.group(2)
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suffix = tag_match.group(3)
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if prefix and suffix:
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iob_tag = prefix + "-" + suffix
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if ner_map:
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suffix = ner_map.get(suffix, suffix)
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if suffix == "":
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iob_tag = "O"
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else:
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iob_tag = prefix + "-" + suffix
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break
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iob.append(iob_tag)
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return iob_to_biluo(iob)
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def generate_sentence(token_annotation, has_ner_tags, tag_pattern, ner_map=None):
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sentence = {}
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tokens = []
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for i, id_ in enumerate(token_annotation.ids):
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token = {}
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token["id"] = id_
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token["orth"] = token_annotation.get_word(i)
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token["tag"] = token_annotation.get_tag(i)
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token["pos"] = token_annotation.get_pos(i)
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token["lemma"] = token_annotation.get_lemma(i)
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token["morph"] = token_annotation.get_morph(i)
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token["head"] = token_annotation.get_head(i) - id_
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token["dep"] = token_annotation.get_dep(i)
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if has_ner_tags:
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token["ner"] = token_annotation.get_entity(i)
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tokens.append(token)
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sentence["tokens"] = tokens
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return sentence
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def create_json_doc(raw, sentences, id_):
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doc = {}
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paragraph = {}
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doc["id"] = id_
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doc["paragraphs"] = []
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paragraph["raw"] = raw.strip()
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paragraph["sentences"] = sentences
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doc["paragraphs"].append(paragraph)
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return doc
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def example_from_conllu_sentence(
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vocab,
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lines,
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ner_tag_pattern,
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merge_subtokens=False,
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append_morphology=False,
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ner_map=None,
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):
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"""Create an Example from the lines for one CoNLL-U sentence, merging
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subtokens and appending morphology to tags if required.
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lines (str): The non-comment lines for a CoNLL-U sentence
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ner_tag_pattern (str): The regex pattern for matching NER in MISC col
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RETURNS (Example): An example containing the annotation
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"""
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# create a Doc with each subtoken as its own token
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# if merging subtokens, each subtoken orth is the merged subtoken form
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if not Token.has_extension("merged_orth"):
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Token.set_extension("merged_orth", default="")
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if not Token.has_extension("merged_lemma"):
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Token.set_extension("merged_lemma", default="")
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if not Token.has_extension("merged_morph"):
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Token.set_extension("merged_morph", default="")
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if not Token.has_extension("merged_spaceafter"):
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Token.set_extension("merged_spaceafter", default="")
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words, spaces, tags, poses, morphs, lemmas = [], [], [], [], [], []
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heads, deps = [], []
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subtok_word = ""
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in_subtok = False
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for i in range(len(lines)):
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line = lines[i]
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parts = line.split("\t")
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id_, word, lemma, pos, tag, morph, head, dep, _1, misc = parts
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if "." in id_:
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continue
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if "-" in id_:
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in_subtok = True
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if "-" in id_:
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in_subtok = True
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subtok_word = word
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subtok_start, subtok_end = id_.split("-")
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subtok_spaceafter = "SpaceAfter=No" not in misc
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continue
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if merge_subtokens and in_subtok:
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words.append(subtok_word)
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else:
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words.append(word)
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if in_subtok:
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if id_ == subtok_end:
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spaces.append(subtok_spaceafter)
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else:
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spaces.append(False)
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elif "SpaceAfter=No" in misc:
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spaces.append(False)
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else:
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spaces.append(True)
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if in_subtok and id_ == subtok_end:
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subtok_word = ""
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in_subtok = False
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id_ = int(id_) - 1
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head = (int(head) - 1) if head not in ("0", "_") else id_
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tag = pos if tag == "_" else tag
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morph = morph if morph != "_" else ""
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dep = "ROOT" if dep == "root" else dep
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lemmas.append(lemma)
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poses.append(pos)
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tags.append(tag)
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morphs.append(morph)
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heads.append(head)
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deps.append(dep)
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doc = Doc(vocab, words=words, spaces=spaces)
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for i in range(len(doc)):
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doc[i].tag_ = tags[i]
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doc[i].pos_ = poses[i]
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doc[i].dep_ = deps[i]
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doc[i].lemma_ = lemmas[i]
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doc[i].head = doc[heads[i]]
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doc[i]._.merged_orth = words[i]
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doc[i]._.merged_morph = morphs[i]
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doc[i]._.merged_lemma = lemmas[i]
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doc[i]._.merged_spaceafter = spaces[i]
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ents = get_entities(lines, ner_tag_pattern, ner_map)
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doc.ents = spans_from_biluo_tags(doc, ents)
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doc.is_parsed = True
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doc.is_tagged = True
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if merge_subtokens:
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doc = merge_conllu_subtokens(lines, doc)
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# create Example from custom Doc annotation
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ids, words, tags, heads, deps = [], [], [], [], []
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pos, lemmas, morphs, spaces = [], [], [], []
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for i, t in enumerate(doc):
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ids.append(i)
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words.append(t._.merged_orth)
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if append_morphology and t._.merged_morph:
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tags.append(t.tag_ + "__" + t._.merged_morph)
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else:
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tags.append(t.tag_)
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pos.append(t.pos_)
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morphs.append(t._.merged_morph)
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lemmas.append(t._.merged_lemma)
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heads.append(t.head.i)
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deps.append(t.dep_)
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spaces.append(t._.merged_spaceafter)
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ent_offsets = [(e.start_char, e.end_char, e.label_) for e in doc.ents]
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ents = biluo_tags_from_offsets(doc, ent_offsets)
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raw = ""
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for word, space in zip(words, spaces):
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raw += word
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if space:
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raw += " "
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example = Example(doc=raw)
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example.set_token_annotation(
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ids=ids,
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words=words,
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tags=tags,
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pos=pos,
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morphs=morphs,
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lemmas=lemmas,
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heads=heads,
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deps=deps,
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entities=ents,
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)
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return example
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def merge_conllu_subtokens(lines, doc):
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# identify and process all subtoken spans to prepare attrs for merging
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subtok_spans = []
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for line in lines:
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parts = line.split("\t")
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id_, word, lemma, pos, tag, morph, head, dep, _1, misc = parts
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if "-" in id_:
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subtok_start, subtok_end = id_.split("-")
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subtok_span = doc[int(subtok_start) - 1 : int(subtok_end)]
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subtok_spans.append(subtok_span)
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# create merged tag, morph, and lemma values
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tags = []
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morphs = {}
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lemmas = []
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for token in subtok_span:
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tags.append(token.tag_)
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lemmas.append(token.lemma_)
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if token._.merged_morph:
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for feature in token._.merged_morph.split("|"):
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field, values = feature.split("=", 1)
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if field not in morphs:
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morphs[field] = set()
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for value in values.split(","):
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morphs[field].add(value)
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# create merged features for each morph field
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for field, values in morphs.items():
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morphs[field] = field + "=" + ",".join(sorted(values))
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# set the same attrs on all subtok tokens so that whatever head the
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# retokenizer chooses, the final attrs are available on that token
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for token in subtok_span:
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token._.merged_orth = token.orth_
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token._.merged_lemma = " ".join(lemmas)
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token.tag_ = "_".join(tags)
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token._.merged_morph = "|".join(sorted(morphs.values()))
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token._.merged_spaceafter = (
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True if subtok_span[-1].whitespace_ else False
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)
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with doc.retokenize() as retokenizer:
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for span in subtok_spans:
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retokenizer.merge(span)
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return doc
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