mirror of
https://github.com/explosion/spaCy.git
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0ba1b5eebc
* document token ent_kb_id * document span kb_id * update pipeline documentation * prior and context weights as bool's instead * entitylinker api documentation * drop for both models * finish entitylinker documentation * small fixes * documentation for KB * candidate documentation * links to api pages in code * small fix * frequency examples as counts for consistency * consistent documentation about tensors returned by predict * add entity linking to usage 101 * add entity linking infobox and KB section to 101 * entity-linking in linguistic features * small typo corrections * training example and docs for entity_linker * predefined nlp and kb * revert back to similarity encodings for simplicity (for now) * set prior probabilities to 0 when excluded * code clean up * bugfix: deleting kb ID from tokens when entities were removed * refactor train el example to use either model or vocab * pretrain_kb example for example kb generation * add to training docs for KB + EL example scripts * small fixes * error numbering * ensure the language of vocab and nlp stay consistent across serialization * equality with = * avoid conflict in errors file * add error 151 * final adjustements to the train scripts - consistency * update of goldparse documentation * small corrections * push commit * turn kb_creator into CLI script (wip) * proper parameters for training entity vectors * wikidata pipeline split up into two executable scripts * remove context_width * move wikidata scripts in bin directory, remove old dummy script * refine KB script with logs and preprocessing options * small edits * small improvements to logging of EL CLI script
430 lines
17 KiB
Python
430 lines
17 KiB
Python
# coding: utf-8
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from __future__ import unicode_literals
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import random
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import re
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import bz2
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import datetime
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from spacy.gold import GoldParse
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from bin.wiki_entity_linking import kb_creator
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"""
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Process Wikipedia interlinks to generate a training dataset for the EL algorithm.
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Gold-standard entities are stored in one file in standoff format (by character offset).
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"""
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ENTITY_FILE = "gold_entities.csv"
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def now():
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return datetime.datetime.now()
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def create_training(wikipedia_input, entity_def_input, training_output, limit=None):
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wp_to_id = kb_creator.get_entity_to_id(entity_def_input)
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_process_wikipedia_texts(wikipedia_input, wp_to_id, training_output, limit=limit)
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def _process_wikipedia_texts(wikipedia_input, wp_to_id, training_output, limit=None):
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"""
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Read the XML wikipedia data to parse out training data:
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raw text data + positive instances
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"""
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title_regex = re.compile(r"(?<=<title>).*(?=</title>)")
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id_regex = re.compile(r"(?<=<id>)\d*(?=</id>)")
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read_ids = set()
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entityfile_loc = training_output / ENTITY_FILE
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with entityfile_loc.open("w", encoding="utf8") as entityfile:
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# write entity training header file
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_write_training_entity(
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outputfile=entityfile,
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article_id="article_id",
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alias="alias",
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entity="WD_id",
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start="start",
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end="end",
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)
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with bz2.open(wikipedia_input, mode="rb") as file:
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line = file.readline()
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cnt = 0
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article_text = ""
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article_title = None
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article_id = None
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reading_text = False
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reading_revision = False
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while line and (not limit or cnt < limit):
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if cnt % 1000000 == 0:
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print(now(), "processed", cnt, "lines of Wikipedia dump")
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clean_line = line.strip().decode("utf-8")
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if clean_line == "<revision>":
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reading_revision = True
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elif clean_line == "</revision>":
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reading_revision = False
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# Start reading new page
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if clean_line == "<page>":
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article_text = ""
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article_title = None
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article_id = None
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# finished reading this page
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elif clean_line == "</page>":
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if article_id:
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try:
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_process_wp_text(
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wp_to_id,
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entityfile,
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article_id,
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article_title,
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article_text.strip(),
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training_output,
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)
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except Exception as e:
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print(
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"Error processing article", article_id, article_title, e
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)
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else:
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print(
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"Done processing a page, but couldn't find an article_id ?",
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article_title,
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)
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article_text = ""
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article_title = None
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article_id = None
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reading_text = False
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reading_revision = False
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# start reading text within a page
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if "<text" in clean_line:
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reading_text = True
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if reading_text:
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article_text += " " + clean_line
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# stop reading text within a page (we assume a new page doesn't start on the same line)
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if "</text" in clean_line:
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reading_text = False
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# read the ID of this article (outside the revision portion of the document)
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if not reading_revision:
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ids = id_regex.search(clean_line)
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if ids:
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article_id = ids[0]
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if article_id in read_ids:
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print(
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"Found duplicate article ID", article_id, clean_line
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) # This should never happen ...
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read_ids.add(article_id)
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# read the title of this article (outside the revision portion of the document)
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if not reading_revision:
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titles = title_regex.search(clean_line)
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if titles:
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article_title = titles[0].strip()
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line = file.readline()
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cnt += 1
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print(now(), "processed", cnt, "lines of Wikipedia dump")
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text_regex = re.compile(r"(?<=<text xml:space=\"preserve\">).*(?=</text)")
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def _process_wp_text(
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wp_to_id, entityfile, article_id, article_title, article_text, training_output
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):
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found_entities = False
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# ignore meta Wikipedia pages
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if article_title.startswith("Wikipedia:"):
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return
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# remove the text tags
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text = text_regex.search(article_text).group(0)
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# stop processing if this is a redirect page
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if text.startswith("#REDIRECT"):
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return
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# get the raw text without markup etc, keeping only interwiki links
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clean_text = _get_clean_wp_text(text)
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# read the text char by char to get the right offsets for the interwiki links
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final_text = ""
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open_read = 0
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reading_text = True
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reading_entity = False
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reading_mention = False
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reading_special_case = False
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entity_buffer = ""
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mention_buffer = ""
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for index, letter in enumerate(clean_text):
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if letter == "[":
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open_read += 1
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elif letter == "]":
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open_read -= 1
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elif letter == "|":
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if reading_text:
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final_text += letter
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# switch from reading entity to mention in the [[entity|mention]] pattern
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elif reading_entity:
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reading_text = False
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reading_entity = False
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reading_mention = True
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else:
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reading_special_case = True
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else:
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if reading_entity:
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entity_buffer += letter
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elif reading_mention:
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mention_buffer += letter
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elif reading_text:
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final_text += letter
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else:
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raise ValueError("Not sure at point", clean_text[index - 2 : index + 2])
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if open_read > 2:
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reading_special_case = True
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if open_read == 2 and reading_text:
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reading_text = False
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reading_entity = True
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reading_mention = False
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# we just finished reading an entity
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if open_read == 0 and not reading_text:
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if "#" in entity_buffer or entity_buffer.startswith(":"):
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reading_special_case = True
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# Ignore cases with nested structures like File: handles etc
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if not reading_special_case:
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if not mention_buffer:
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mention_buffer = entity_buffer
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start = len(final_text)
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end = start + len(mention_buffer)
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qid = wp_to_id.get(entity_buffer, None)
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if qid:
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_write_training_entity(
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outputfile=entityfile,
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article_id=article_id,
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alias=mention_buffer,
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entity=qid,
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start=start,
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end=end,
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)
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found_entities = True
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final_text += mention_buffer
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entity_buffer = ""
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mention_buffer = ""
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reading_text = True
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reading_entity = False
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reading_mention = False
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reading_special_case = False
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if found_entities:
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_write_training_article(
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article_id=article_id,
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clean_text=final_text,
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training_output=training_output,
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)
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info_regex = re.compile(r"{[^{]*?}")
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htlm_regex = re.compile(r"<!--[^-]*-->")
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category_regex = re.compile(r"\[\[Category:[^\[]*]]")
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file_regex = re.compile(r"\[\[File:[^[\]]+]]")
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ref_regex = re.compile(r"<ref.*?>") # non-greedy
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ref_2_regex = re.compile(r"</ref.*?>") # non-greedy
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def _get_clean_wp_text(article_text):
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clean_text = article_text.strip()
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# remove bolding & italic markup
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clean_text = clean_text.replace("'''", "")
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clean_text = clean_text.replace("''", "")
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# remove nested {{info}} statements by removing the inner/smallest ones first and iterating
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try_again = True
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previous_length = len(clean_text)
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while try_again:
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clean_text = info_regex.sub(
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"", clean_text
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) # non-greedy match excluding a nested {
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if len(clean_text) < previous_length:
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try_again = True
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else:
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try_again = False
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previous_length = len(clean_text)
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# remove HTML comments
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clean_text = htlm_regex.sub("", clean_text)
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# remove Category and File statements
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clean_text = category_regex.sub("", clean_text)
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clean_text = file_regex.sub("", clean_text)
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# remove multiple =
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while "==" in clean_text:
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clean_text = clean_text.replace("==", "=")
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clean_text = clean_text.replace(". =", ".")
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clean_text = clean_text.replace(" = ", ". ")
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clean_text = clean_text.replace("= ", ".")
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clean_text = clean_text.replace(" =", "")
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# remove refs (non-greedy match)
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clean_text = ref_regex.sub("", clean_text)
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clean_text = ref_2_regex.sub("", clean_text)
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# remove additional wikiformatting
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clean_text = re.sub(r"<blockquote>", "", clean_text)
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clean_text = re.sub(r"</blockquote>", "", clean_text)
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# change special characters back to normal ones
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clean_text = clean_text.replace(r"<", "<")
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clean_text = clean_text.replace(r">", ">")
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clean_text = clean_text.replace(r""", '"')
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clean_text = clean_text.replace(r"&nbsp;", " ")
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clean_text = clean_text.replace(r"&", "&")
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# remove multiple spaces
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while " " in clean_text:
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clean_text = clean_text.replace(" ", " ")
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return clean_text.strip()
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def _write_training_article(article_id, clean_text, training_output):
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file_loc = training_output / "{}.txt".format(article_id)
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with file_loc.open("w", encoding="utf8") as outputfile:
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outputfile.write(clean_text)
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def _write_training_entity(outputfile, article_id, alias, entity, start, end):
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line = "{}|{}|{}|{}|{}\n".format(article_id, alias, entity, start, end)
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outputfile.write(line)
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def is_dev(article_id):
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return article_id.endswith("3")
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def read_training(nlp, training_dir, dev, limit, kb=None):
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""" This method provides training examples that correspond to the entity annotations found by the nlp object.
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When kb is provided (for training), it will include negative training examples by using the candidate generator,
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and it will only keep positive training examples that can be found in the KB.
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When kb=None (for testing), it will include all positive examples only."""
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entityfile_loc = training_dir / ENTITY_FILE
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data = []
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# assume the data is written sequentially, so we can reuse the article docs
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current_article_id = None
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current_doc = None
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ents_by_offset = dict()
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skip_articles = set()
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total_entities = 0
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with entityfile_loc.open("r", encoding="utf8") as file:
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for line in file:
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if not limit or len(data) < limit:
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fields = line.replace("\n", "").split(sep="|")
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article_id = fields[0]
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alias = fields[1]
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wd_id = fields[2]
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start = fields[3]
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end = fields[4]
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if (
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dev == is_dev(article_id)
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and article_id != "article_id"
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and article_id not in skip_articles
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):
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if not current_doc or (current_article_id != article_id):
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# parse the new article text
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file_name = article_id + ".txt"
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try:
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training_file = training_dir / file_name
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with training_file.open("r", encoding="utf8") as f:
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text = f.read()
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# threshold for convenience / speed of processing
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if len(text) < 30000:
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current_doc = nlp(text)
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current_article_id = article_id
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ents_by_offset = dict()
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for ent in current_doc.ents:
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sent_length = len(ent.sent)
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# custom filtering to avoid too long or too short sentences
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if 5 < sent_length < 100:
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offset = "{}_{}".format(
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ent.start_char, ent.end_char
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)
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ents_by_offset[offset] = ent
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else:
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skip_articles.add(article_id)
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current_doc = None
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except Exception as e:
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print("Problem parsing article", article_id, e)
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skip_articles.add(article_id)
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# repeat checking this condition in case an exception was thrown
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if current_doc and (current_article_id == article_id):
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offset = "{}_{}".format(start, end)
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found_ent = ents_by_offset.get(offset, None)
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if found_ent:
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if found_ent.text != alias:
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skip_articles.add(article_id)
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current_doc = None
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else:
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sent = found_ent.sent.as_doc()
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gold_start = int(start) - found_ent.sent.start_char
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gold_end = int(end) - found_ent.sent.start_char
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gold_entities = {}
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found_useful = False
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for ent in sent.ents:
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entry = (ent.start_char, ent.end_char)
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gold_entry = (gold_start, gold_end)
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if entry == gold_entry:
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# add both pos and neg examples (in random order)
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# this will exclude examples not in the KB
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if kb:
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value_by_id = {}
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candidates = kb.get_candidates(alias)
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candidate_ids = [
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c.entity_ for c in candidates
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]
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random.shuffle(candidate_ids)
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for kb_id in candidate_ids:
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found_useful = True
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if kb_id != wd_id:
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value_by_id[kb_id] = 0.0
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else:
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value_by_id[kb_id] = 1.0
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gold_entities[entry] = value_by_id
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# if no KB, keep all positive examples
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else:
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found_useful = True
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value_by_id = {wd_id: 1.0}
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gold_entities[entry] = value_by_id
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# currently feeding the gold data one entity per sentence at a time
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# setting all other entities to empty gold dictionary
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else:
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gold_entities[entry] = {}
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if found_useful:
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gold = GoldParse(doc=sent, links=gold_entities)
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data.append((sent, gold))
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total_entities += 1
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if len(data) % 2500 == 0:
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print(" -read", total_entities, "entities")
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print(" -read", total_entities, "entities")
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return data
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