mirror of
https://github.com/explosion/spaCy.git
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190 lines
6.2 KiB
Python
190 lines
6.2 KiB
Python
# coding: utf-8
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from __future__ import unicode_literals
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import csv
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import logging
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import spacy
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import sys
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from spacy.kb import KnowledgeBase
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from bin.wiki_entity_linking import wikipedia_processor as wp
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from bin.wiki_entity_linking.train_descriptions import EntityEncoder
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csv.field_size_limit(sys.maxsize)
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logger = logging.getLogger(__name__)
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def create_kb(
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nlp,
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max_entities_per_alias,
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min_entity_freq,
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min_occ,
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entity_def_input,
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entity_descr_path,
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count_input,
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prior_prob_input,
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entity_vector_length,
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):
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# Create the knowledge base from Wikidata entries
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kb = KnowledgeBase(vocab=nlp.vocab, entity_vector_length=entity_vector_length)
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# read the mappings from file
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title_to_id = get_entity_to_id(entity_def_input)
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id_to_descr = get_id_to_description(entity_descr_path)
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# check the length of the nlp vectors
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if "vectors" in nlp.meta and nlp.vocab.vectors.size:
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input_dim = nlp.vocab.vectors_length
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logger.info("Loaded pretrained vectors of size %s" % input_dim)
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else:
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raise ValueError(
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"The `nlp` object should have access to pretrained word vectors, "
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" cf. https://spacy.io/usage/models#languages."
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)
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logger.info("Get entity frequencies")
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entity_frequencies = wp.get_all_frequencies(count_input=count_input)
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logger.info("Filtering entities with fewer than {} mentions".format(min_entity_freq))
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# filter the entities for in the KB by frequency, because there's just too much data (8M entities) otherwise
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filtered_title_to_id, entity_list, description_list, frequency_list = get_filtered_entities(
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title_to_id,
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id_to_descr,
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entity_frequencies,
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min_entity_freq
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)
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logger.info("Left with {} entities".format(len(description_list)))
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logger.info("Train entity encoder")
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encoder = EntityEncoder(nlp, input_dim, entity_vector_length)
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encoder.train(description_list=description_list, to_print=True)
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logger.info("Get entity embeddings:")
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embeddings = encoder.apply_encoder(description_list)
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logger.info("Adding {} entities".format(len(entity_list)))
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kb.set_entities(
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entity_list=entity_list, freq_list=frequency_list, vector_list=embeddings
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)
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logger.info("Adding aliases")
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_add_aliases(
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kb,
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title_to_id=filtered_title_to_id,
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max_entities_per_alias=max_entities_per_alias,
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min_occ=min_occ,
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prior_prob_input=prior_prob_input,
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)
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logger.info("KB size: {} entities, {} aliases".format(
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kb.get_size_entities(),
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kb.get_size_aliases()))
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logger.info("Done with kb")
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return kb
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def get_filtered_entities(title_to_id, id_to_descr, entity_frequencies,
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min_entity_freq: int = 10):
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filtered_title_to_id = dict()
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entity_list = []
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description_list = []
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frequency_list = []
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for title, entity in title_to_id.items():
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freq = entity_frequencies.get(title, 0)
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desc = id_to_descr.get(entity, None)
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if desc and freq > min_entity_freq:
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entity_list.append(entity)
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description_list.append(desc)
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frequency_list.append(freq)
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filtered_title_to_id[title] = entity
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return filtered_title_to_id, entity_list, description_list, frequency_list
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def get_entity_to_id(entity_def_output):
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entity_to_id = dict()
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with entity_def_output.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_id[row[0]] = row[1]
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return entity_to_id
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def get_id_to_description(entity_descr_path):
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id_to_desc = dict()
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with entity_descr_path.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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id_to_desc[row[0]] = row[1]
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return id_to_desc
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def _add_aliases(kb, title_to_id, max_entities_per_alias, min_occ, prior_prob_input):
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wp_titles = title_to_id.keys()
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# adding aliases with prior probabilities
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# we can read this file sequentially, it's sorted by alias, and then by count
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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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previous_alias = None
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total_count = 0
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counts = []
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entities = []
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while line:
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splits = line.replace("\n", "").split(sep="|")
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new_alias = splits[0]
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count = int(splits[1])
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entity = splits[2]
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if new_alias != previous_alias and previous_alias:
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# done reading the previous alias --> output
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if len(entities) > 0:
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selected_entities = []
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prior_probs = []
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for ent_count, ent_string in zip(counts, entities):
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if ent_string in wp_titles:
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wd_id = title_to_id[ent_string]
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p_entity_givenalias = ent_count / total_count
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selected_entities.append(wd_id)
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prior_probs.append(p_entity_givenalias)
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if selected_entities:
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try:
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kb.add_alias(
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alias=previous_alias,
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entities=selected_entities,
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probabilities=prior_probs,
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)
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except ValueError as e:
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logger.error(e)
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total_count = 0
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counts = []
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entities = []
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total_count += count
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if len(entities) < max_entities_per_alias and count >= min_occ:
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counts.append(count)
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entities.append(entity)
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previous_alias = new_alias
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line = prior_file.readline()
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def read_nlp_kb(model_dir, kb_file):
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nlp = spacy.load(model_dir)
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kb = KnowledgeBase(vocab=nlp.vocab)
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kb.load_bulk(kb_file)
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logger.info("kb entities: {}".format(kb.get_size_entities()))
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logger.info("kb aliases: {}".format(kb.get_size_aliases()))
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return nlp, kb
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