mirror of
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569cc98982
* Add load_from_config function * Add train_from_config script * Merge configs and expose via spacy.config * Fix script * Suggest create_evaluation_callback * Hard-code for NER * Fix errors * Register command * Add TODO * Update train-from-config todos * Fix imports * Allow delayed setting of parser model nr_class * Get train-from-config working * Tidy up and fix scores and printing * Hide traceback if cancelled * Fix weighted score formatting * Fix score formatting * Make output_path optional * Add Tok2Vec component * Tidy up and add tok2vec_tensors * Add option to copy docs in nlp.update * Copy docs in nlp.update * Adjust nlp.update() for set_annotations * Don't shuffle pipes in nlp.update, decruft * Support set_annotations arg in component update * Support set_annotations in parser update * Add get_gradients method * Add get_gradients to parser * Update errors.py * Fix problems caused by merge * Add _link_components method in nlp * Add concept of 'listeners' and ControlledModel * Support optional attributes arg in ControlledModel * Try having tok2vec component in pipeline * Fix tok2vec component * Fix config * Fix tok2vec * Update for Example * Update for Example * Update config * Add eg2doc util * Update and add schemas/types * Update schemas * Fix nlp.update * Fix tagger * Remove hacks from train-from-config * Remove hard-coded config str * Calculate loss in tok2vec component * Tidy up and use function signatures instead of models * Support union types for registry models * Minor cleaning in Language.update * Make ControlledModel specifically Tok2VecListener * Fix train_from_config * Fix tok2vec * Tidy up * Add function for bilstm tok2vec * Fix type * Fix syntax * Fix pytorch optimizer * Add example configs * Update for thinc describe changes * Update for Thinc changes * Update for dropout/sgd changes * Update for dropout/sgd changes * Unhack gradient update * Work on refactoring _ml * Remove _ml.py module * WIP upgrade cli scripts for thinc * Move some _ml stuff to util * Import link_vectors from util * Update train_from_config * Import from util * Import from util * Temporarily add ml.component_models module * Move ml methods * Move typedefs * Update load vectors * Update gitignore * Move imports * Add PrecomputableAffine * Fix imports * Fix imports * Fix imports * Fix missing imports * Update CLI scripts * Update spacy.language * Add stubs for building the models * Update model definition * Update create_default_optimizer * Fix import * Fix comment * Update imports in tests * Update imports in spacy.cli * Fix import * fix obsolete thinc imports * update srsly pin * from thinc to ml_datasets for example data such as imdb * update ml_datasets pin * using STATE.vectors * small fix * fix Sentencizer.pipe * black formatting * rename Affine to Linear as in thinc * set validate explicitely to True * rename with_square_sequences to with_list2padded * rename with_flatten to with_list2array * chaining layernorm * small fixes * revert Optimizer import * build_nel_encoder with new thinc style * fixes using model's get and set methods * Tok2Vec in component models, various fixes * fix up legacy tok2vec code * add model initialize calls * add in build_tagger_model * small fixes * setting model dims * fixes for ParserModel * various small fixes * initialize thinc Models * fixes * consistent naming of window_size * fixes, removing set_dropout * work around Iterable issue * remove legacy tok2vec * util fix * fix forward function of tok2vec listener * more fixes * trying to fix PrecomputableAffine (not succesful yet) * alloc instead of allocate * add morphologizer * rename residual * rename fixes * Fix predict function * Update parser and parser model * fixing few more tests * Fix precomputable affine * Update component model * Update parser model * Move backprop padding to own function, for test * Update test * Fix p. affine * Update NEL * build_bow_text_classifier and extract_ngrams * Fix parser init * Fix test add label * add build_simple_cnn_text_classifier * Fix parser init * Set gpu off by default in example * Fix tok2vec listener * Fix parser model * Small fixes * small fix for PyTorchLSTM parameters * revert my_compounding hack (iterable fixed now) * fix biLSTM * Fix uniqued * PyTorchRNNWrapper fix * small fixes * use helper function to calculate cosine loss * small fixes for build_simple_cnn_text_classifier * putting dropout default at 0.0 to ensure the layer gets built * using thinc util's set_dropout_rate * moving layer normalization inside of maxout definition to optimize dropout * temp debugging in NEL * fixed NEL model by using init defaults ! * fixing after set_dropout_rate refactor * proper fix * fix test_update_doc after refactoring optimizers in thinc * Add CharacterEmbed layer * Construct tagger Model * Add missing import * Remove unused stuff * Work on textcat * fix test (again :)) after optimizer refactor * fixes to allow reading Tagger from_disk without overwriting dimensions * don't build the tok2vec prematuraly * fix CharachterEmbed init * CharacterEmbed fixes * Fix CharacterEmbed architecture * fix imports * renames from latest thinc update * one more rename * add initialize calls where appropriate * fix parser initialization * Update Thinc version * Fix errors, auto-format and tidy up imports * Fix validation * fix if bias is cupy array * revert for now * ensure it's a numpy array before running bp in ParserStepModel * no reason to call require_gpu twice * use CupyOps.to_numpy instead of cupy directly * fix initialize of ParserModel * remove unnecessary import * fixes for CosineDistance * fix device renaming * use refactored loss functions (Thinc PR 251) * overfitting test for tagger * experimental settings for the tagger: avoid zero-init and subword normalization * clean up tagger overfitting test * use previous default value for nP * remove toy config * bringing layernorm back (had a bug - fixed in thinc) * revert setting nP explicitly * remove setting default in constructor * restore values as they used to be * add overfitting test for NER * add overfitting test for dep parser * add overfitting test for textcat * fixing init for linear (previously affine) * larger eps window for textcat * ensure doc is not None * Require newer thinc * Make float check vaguer * Slop the textcat overfit test more * Fix textcat test * Fix exclusive classes for textcat * fix after renaming of alloc methods * fixing renames and mandatory arguments (staticvectors WIP) * upgrade to thinc==8.0.0.dev3 * refer to vocab.vectors directly instead of its name * rename alpha to learn_rate * adding hashembed and staticvectors dropout * upgrade to thinc 8.0.0.dev4 * add name back to avoid warning W020 * thinc dev4 * update srsly * using thinc 8.0.0a0 ! Co-authored-by: Matthew Honnibal <honnibal+gh@gmail.com> Co-authored-by: Ines Montani <ines@ines.io>
193 lines
6.9 KiB
Python
193 lines
6.9 KiB
Python
# coding: utf-8
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"""Script to take a previously created Knowledge Base and train an entity linking
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pipeline. The provided KB directory should hold the kb, the original nlp object and
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its vocab used to create the KB, and a few auxiliary files such as the entity definitions,
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as created by the script `wikidata_create_kb`.
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For the Wikipedia dump: get enwiki-latest-pages-articles-multistream.xml.bz2
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from https://dumps.wikimedia.org/enwiki/latest/
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"""
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from __future__ import unicode_literals
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import random
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import logging
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import spacy
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from pathlib import Path
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import plac
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from bin.wiki_entity_linking import wikipedia_processor
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from bin.wiki_entity_linking import TRAINING_DATA_FILE, KB_MODEL_DIR, KB_FILE, LOG_FORMAT, OUTPUT_MODEL_DIR
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from bin.wiki_entity_linking.entity_linker_evaluation import measure_performance
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from bin.wiki_entity_linking.kb_creator import read_kb
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from spacy.util import minibatch, compounding
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logger = logging.getLogger(__name__)
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@plac.annotations(
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dir_kb=("Directory with KB, NLP and related files", "positional", None, Path),
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output_dir=("Output directory", "option", "o", Path),
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loc_training=("Location to training data", "option", "k", Path),
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epochs=("Number of training iterations (default 10)", "option", "e", int),
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dropout=("Dropout to prevent overfitting (default 0.5)", "option", "p", float),
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lr=("Learning rate (default 0.005)", "option", "n", float),
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l2=("L2 regularization", "option", "r", float),
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train_inst=("# training instances (default 90% of all)", "option", "t", int),
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dev_inst=("# test instances (default 10% of all)", "option", "d", int),
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labels_discard=("NER labels to discard (default None)", "option", "l", str),
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)
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def main(
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dir_kb,
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output_dir=None,
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loc_training=None,
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epochs=10,
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dropout=0.5,
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lr=0.005,
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l2=1e-6,
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train_inst=None,
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dev_inst=None,
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labels_discard=None
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):
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logger.info("Creating Entity Linker with Wikipedia and WikiData")
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output_dir = Path(output_dir) if output_dir else dir_kb
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training_path = loc_training if loc_training else dir_kb / TRAINING_DATA_FILE
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nlp_dir = dir_kb / KB_MODEL_DIR
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kb_path = dir_kb / KB_FILE
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nlp_output_dir = output_dir / OUTPUT_MODEL_DIR
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# STEP 0: set up IO
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if not output_dir.exists():
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output_dir.mkdir()
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# STEP 1 : load the NLP object
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logger.info("STEP 1a: Loading model from {}".format(nlp_dir))
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nlp = spacy.load(nlp_dir)
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logger.info("STEP 1b: Loading KB from {}".format(kb_path))
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kb = read_kb(nlp, kb_path)
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# check that there is a NER component in the pipeline
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if "ner" not in nlp.pipe_names:
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raise ValueError("The `nlp` object should have a pretrained `ner` component.")
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# STEP 2: read the training dataset previously created from WP
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logger.info("STEP 2: Reading training dataset from {}".format(training_path))
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if labels_discard:
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labels_discard = [x.strip() for x in labels_discard.split(",")]
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logger.info("Discarding {} NER types: {}".format(len(labels_discard), labels_discard))
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else:
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labels_discard = []
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train_data = wikipedia_processor.read_training(
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nlp=nlp,
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entity_file_path=training_path,
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dev=False,
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limit=train_inst,
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kb=kb,
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labels_discard=labels_discard
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)
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# for testing, get all pos instances (independently of KB)
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dev_data = wikipedia_processor.read_training(
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nlp=nlp,
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entity_file_path=training_path,
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dev=True,
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limit=dev_inst,
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kb=None,
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labels_discard=labels_discard
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)
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# STEP 3: create and train an entity linking pipe
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logger.info("STEP 3: Creating and training an Entity Linking pipe")
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el_pipe = nlp.create_pipe(
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name="entity_linker", config={"pretrained_vectors": nlp.vocab.vectors,
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"labels_discard": labels_discard}
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)
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el_pipe.set_kb(kb)
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nlp.add_pipe(el_pipe, last=True)
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other_pipes = [pipe for pipe in nlp.pipe_names if pipe != "entity_linker"]
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with nlp.disable_pipes(*other_pipes): # only train Entity Linking
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optimizer = nlp.begin_training()
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optimizer.learn_rate = lr
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optimizer.L2 = l2
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logger.info("Training on {} articles".format(len(train_data)))
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logger.info("Dev testing on {} articles".format(len(dev_data)))
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# baseline performance on dev data
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logger.info("Dev Baseline Accuracies:")
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measure_performance(dev_data, kb, el_pipe, baseline=True, context=False)
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for itn in range(epochs):
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random.shuffle(train_data)
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losses = {}
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batches = minibatch(train_data, size=compounding(4.0, 128.0, 1.001))
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batchnr = 0
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with nlp.disable_pipes(*other_pipes):
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for batch in batches:
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try:
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nlp.update(
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examples=batch,
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sgd=optimizer,
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drop=dropout,
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losses=losses,
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)
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batchnr += 1
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except Exception as e:
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logger.error("Error updating batch:" + str(e))
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if batchnr > 0:
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logging.info("Epoch {}, train loss {}".format(itn, round(losses["entity_linker"] / batchnr, 2)))
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measure_performance(dev_data, kb, el_pipe, baseline=False, context=True)
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# STEP 4: measure the performance of our trained pipe on an independent dev set
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logger.info("STEP 4: Final performance measurement of Entity Linking pipe")
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measure_performance(dev_data, kb, el_pipe)
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# STEP 5: apply the EL pipe on a toy example
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logger.info("STEP 5: Applying Entity Linking to toy example")
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run_el_toy_example(nlp=nlp)
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if output_dir:
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# STEP 6: write the NLP pipeline (now including an EL model) to file
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logger.info("STEP 6: Writing trained NLP to {}".format(nlp_output_dir))
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nlp.to_disk(nlp_output_dir)
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logger.info("Done!")
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def check_kb(kb):
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for mention in ("Bush", "Douglas Adams", "Homer", "Brazil", "China"):
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candidates = kb.get_candidates(mention)
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logger.info("generating candidates for " + mention + " :")
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for c in candidates:
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logger.info(" ".join[
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str(c.prior_prob),
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c.alias_,
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"-->",
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c.entity_ + " (freq=" + str(c.entity_freq) + ")"
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])
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def run_el_toy_example(nlp):
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text = (
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"In The Hitchhiker's Guide to the Galaxy, written by Douglas Adams, "
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"Douglas reminds us to always bring our towel, even in China or Brazil. "
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"The main character in Doug's novel is the man Arthur Dent, "
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"but Dougledydoug doesn't write about George Washington or Homer Simpson."
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)
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doc = nlp(text)
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logger.info(text)
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for ent in doc.ents:
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logger.info(" ".join(["ent", ent.text, ent.label_, ent.kb_id_]))
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if __name__ == "__main__":
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logging.basicConfig(level=logging.INFO, format=LOG_FORMAT)
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plac.call(main)
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