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
263 lines
7.0 KiB
Python
263 lines
7.0 KiB
Python
# coding: utf-8
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from __future__ import unicode_literals
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import re
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import bz2
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import csv
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import datetime
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"""
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Process a Wikipedia dump to calculate entity frequencies and prior probabilities in combination with certain mentions.
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Write these results to file for downstream KB and training data generation.
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"""
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map_alias_to_link = dict()
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# these will/should be matched ignoring case
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wiki_namespaces = [
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"b",
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"betawikiversity",
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"Book",
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"c",
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"Category",
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"Commons",
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"d",
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"dbdump",
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"download",
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"Draft",
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"Education",
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"Foundation",
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"Gadget",
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"Gadget definition",
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"gerrit",
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"File",
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"Help",
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"Image",
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"Incubator",
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"m",
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"mail",
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"mailarchive",
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"media",
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"MediaWiki",
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"MediaWiki talk",
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"Mediawikiwiki",
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"MediaZilla",
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"Meta",
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"Metawikipedia",
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"Module",
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"mw",
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"n",
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"nost",
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"oldwikisource",
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"outreach",
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"outreachwiki",
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"otrs",
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"OTRSwiki",
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"Portal",
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"phab",
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"Phabricator",
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"Project",
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"q",
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"quality",
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"rev",
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"s",
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"spcom",
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"Special",
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"species",
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"Strategy",
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"sulutil",
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"svn",
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"Talk",
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"Template",
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"Template talk",
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"Testwiki",
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"ticket",
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"TimedText",
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"Toollabs",
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"tools",
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"tswiki",
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"User",
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"User talk",
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"v",
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"voy",
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"w",
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"Wikibooks",
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"Wikidata",
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"wikiHow",
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"Wikinvest",
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"wikilivres",
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"Wikimedia",
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"Wikinews",
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"Wikipedia",
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"Wikipedia talk",
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"Wikiquote",
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"Wikisource",
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"Wikispecies",
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"Wikitech",
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"Wikiversity",
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"Wikivoyage",
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"wikt",
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"wiktionary",
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"wmf",
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"wmania",
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"WP",
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]
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# find the links
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link_regex = re.compile(r"\[\[[^\[\]]*\]\]")
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# match on interwiki links, e.g. `en:` or `:fr:`
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ns_regex = r":?" + "[a-z][a-z]" + ":"
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# match on Namespace: optionally preceded by a :
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for ns in wiki_namespaces:
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ns_regex += "|" + ":?" + ns + ":"
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ns_regex = re.compile(ns_regex, re.IGNORECASE)
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def now():
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return datetime.datetime.now()
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def read_prior_probs(wikipedia_input, prior_prob_output, limit=None):
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"""
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Read the XML wikipedia data and parse out intra-wiki links to estimate prior probabilities.
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The full file takes about 2h to parse 1100M lines.
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It works relatively fast because it runs line by line, irrelevant of which article the intrawiki is from.
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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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while line and (not limit or cnt < limit):
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if cnt % 25000000 == 0:
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print(now(), "processed", cnt, "lines of Wikipedia XML dump")
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clean_line = line.strip().decode("utf-8")
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aliases, entities, normalizations = get_wp_links(clean_line)
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for alias, entity, norm in zip(aliases, entities, normalizations):
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_store_alias(alias, entity, normalize_alias=norm, normalize_entity=True)
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_store_alias(alias, entity, normalize_alias=norm, normalize_entity=True)
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line = file.readline()
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cnt += 1
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print(now(), "processed", cnt, "lines of Wikipedia XML dump")
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# write all aliases and their entities and count occurrences to file
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with prior_prob_output.open("w", encoding="utf8") as outputfile:
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outputfile.write("alias" + "|" + "count" + "|" + "entity" + "\n")
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for alias, alias_dict in sorted(map_alias_to_link.items(), key=lambda x: x[0]):
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s_dict = sorted(alias_dict.items(), key=lambda x: x[1], reverse=True)
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for entity, count in s_dict:
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outputfile.write(alias + "|" + str(count) + "|" + entity + "\n")
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def _store_alias(alias, entity, normalize_alias=False, normalize_entity=True):
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alias = alias.strip()
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entity = entity.strip()
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# remove everything after # as this is not part of the title but refers to a specific paragraph
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if normalize_entity:
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# wikipedia titles are always capitalized
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entity = _capitalize_first(entity.split("#")[0])
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if normalize_alias:
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alias = alias.split("#")[0]
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if alias and entity:
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alias_dict = map_alias_to_link.get(alias, dict())
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entity_count = alias_dict.get(entity, 0)
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alias_dict[entity] = entity_count + 1
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map_alias_to_link[alias] = alias_dict
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def get_wp_links(text):
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aliases = []
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entities = []
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normalizations = []
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matches = link_regex.findall(text)
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for match in matches:
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match = match[2:][:-2].replace("_", " ").strip()
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if ns_regex.match(match):
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pass # ignore namespaces at the beginning of the string
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# this is a simple [[link]], with the alias the same as the mention
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elif "|" not in match:
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aliases.append(match)
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entities.append(match)
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normalizations.append(True)
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# in wiki format, the link is written as [[entity|alias]]
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else:
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splits = match.split("|")
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entity = splits[0].strip()
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alias = splits[1].strip()
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# specific wiki format [[alias (specification)|]]
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if len(alias) == 0 and "(" in entity:
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alias = entity.split("(")[0]
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aliases.append(alias)
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entities.append(entity)
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normalizations.append(False)
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else:
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aliases.append(alias)
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entities.append(entity)
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normalizations.append(False)
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return aliases, entities, normalizations
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def _capitalize_first(text):
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if not text:
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return None
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result = text[0].capitalize()
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if len(result) > 0:
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result += text[1:]
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return result
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def write_entity_counts(prior_prob_input, count_output, to_print=False):
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# Write entity counts for quick access later
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entity_to_count = dict()
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total_count = 0
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with prior_prob_input.open("r", encoding="utf8") as prior_file:
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# skip header
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prior_file.readline()
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line = prior_file.readline()
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while line:
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splits = line.replace("\n", "").split(sep="|")
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# alias = splits[0]
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count = int(splits[1])
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entity = splits[2]
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current_count = entity_to_count.get(entity, 0)
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entity_to_count[entity] = current_count + count
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total_count += count
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line = prior_file.readline()
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with count_output.open("w", encoding="utf8") as entity_file:
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entity_file.write("entity" + "|" + "count" + "\n")
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for entity, count in entity_to_count.items():
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entity_file.write(entity + "|" + str(count) + "\n")
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if to_print:
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for entity, count in entity_to_count.items():
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print("Entity count:", entity, count)
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print("Total count:", total_count)
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def get_all_frequencies(count_input):
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entity_to_count = dict()
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with count_input.open("r", encoding="utf8") as csvfile:
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csvreader = csv.reader(csvfile, delimiter="|")
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# skip header
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next(csvreader)
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for row in csvreader:
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entity_to_count[row[0]] = int(row[1])
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return entity_to_count
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