mirror of
https://github.com/explosion/spaCy.git
synced 2024-11-14 13:47:13 +03:00
2d249a9502
* fix overflow error on windows * more documentation & logging fixes * md fix * 3 different limit parameters to play with execution time * bug fixes directory locations * small fixes * exclude dev test articles from prior probabilities stats * small fixes * filtering wikidata entities, removing numeric and meta items * adding aliases from wikidata also to the KB * fix adding WD aliases * adding also new aliases to previously added entities * fixing comma's * small doc fixes * adding subclassof filtering * append alias functionality in KB * prevent appending the same entity-alias pair * fix for appending WD aliases * remove date filter * remove unnecessary import * small corrections and reformatting * remove WD aliases for now (too slow) * removing numeric entities from training and evaluation * small fixes * shortcut during prediction if there is only one candidate * add counts and fscore logging, remove FP NER from evaluation * fix entity_linker.predict to take docs instead of single sentences * remove enumeration sentences from the WP dataset * entity_linker.update to process full doc instead of single sentence * spelling corrections and dump locations in readme * NLP IO fix * reading KB is unnecessary at the end of the pipeline * small logging fix * remove empty files
227 lines
7.9 KiB
Python
227 lines
7.9 KiB
Python
import logging
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import random
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from collections import defaultdict
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logger = logging.getLogger(__name__)
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class Metrics(object):
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true_pos = 0
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false_pos = 0
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false_neg = 0
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def update_results(self, true_entity, candidate):
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candidate_is_correct = true_entity == candidate
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# Assume that we have no labeled negatives in the data (i.e. cases where true_entity is "NIL")
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# Therefore, if candidate_is_correct then we have a true positive and never a true negative.
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self.true_pos += candidate_is_correct
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self.false_neg += not candidate_is_correct
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if candidate and candidate not in {"", "NIL"}:
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# A wrong prediction (e.g. Q42 != Q3) counts both as a FP as well as a FN.
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self.false_pos += not candidate_is_correct
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def calculate_precision(self):
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if self.true_pos == 0:
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return 0.0
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else:
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return self.true_pos / (self.true_pos + self.false_pos)
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def calculate_recall(self):
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if self.true_pos == 0:
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return 0.0
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else:
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return self.true_pos / (self.true_pos + self.false_neg)
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def calculate_fscore(self):
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p = self.calculate_precision()
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r = self.calculate_recall()
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if p + r == 0:
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return 0.0
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else:
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return 2 * p * r / (p + r)
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class EvaluationResults(object):
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def __init__(self):
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self.metrics = Metrics()
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self.metrics_by_label = defaultdict(Metrics)
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def update_metrics(self, ent_label, true_entity, candidate):
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self.metrics.update_results(true_entity, candidate)
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self.metrics_by_label[ent_label].update_results(true_entity, candidate)
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def report_metrics(self, model_name):
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model_str = model_name.title()
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recall = self.metrics.calculate_recall()
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precision = self.metrics.calculate_precision()
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fscore = self.metrics.calculate_fscore()
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return (
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"{}: ".format(model_str)
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+ "F-score = {} | ".format(round(fscore, 3))
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+ "Recall = {} | ".format(round(recall, 3))
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+ "Precision = {} | ".format(round(precision, 3))
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+ "F-score by label = {}".format(
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{k: v.calculate_fscore() for k, v in sorted(self.metrics_by_label.items())}
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)
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)
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class BaselineResults(object):
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def __init__(self):
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self.random = EvaluationResults()
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self.prior = EvaluationResults()
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self.oracle = EvaluationResults()
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def report_performance(self, model):
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results = getattr(self, model)
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return results.report_metrics(model)
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def update_baselines(
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self,
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true_entity,
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ent_label,
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random_candidate,
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prior_candidate,
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oracle_candidate,
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):
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self.oracle.update_metrics(ent_label, true_entity, oracle_candidate)
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self.prior.update_metrics(ent_label, true_entity, prior_candidate)
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self.random.update_metrics(ent_label, true_entity, random_candidate)
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def measure_performance(dev_data, kb, el_pipe, baseline=True, context=True):
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if baseline:
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baseline_accuracies, counts = measure_baselines(dev_data, kb)
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logger.info("Counts: {}".format({k: v for k, v in sorted(counts.items())}))
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logger.info(baseline_accuracies.report_performance("random"))
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logger.info(baseline_accuracies.report_performance("prior"))
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logger.info(baseline_accuracies.report_performance("oracle"))
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if context:
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# using only context
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el_pipe.cfg["incl_context"] = True
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el_pipe.cfg["incl_prior"] = False
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results = get_eval_results(dev_data, el_pipe)
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logger.info(results.report_metrics("context only"))
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# measuring combined accuracy (prior + context)
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el_pipe.cfg["incl_context"] = True
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el_pipe.cfg["incl_prior"] = True
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results = get_eval_results(dev_data, el_pipe)
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logger.info(results.report_metrics("context and prior"))
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def get_eval_results(data, el_pipe=None):
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"""
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Evaluate the ent.kb_id_ annotations against the gold standard.
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Only evaluate entities that overlap between gold and NER, to isolate the performance of the NEL.
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If the docs in the data require further processing with an entity linker, set el_pipe.
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"""
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from tqdm import tqdm
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docs = []
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golds = []
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for d, g in tqdm(data, leave=False):
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if len(d) > 0:
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golds.append(g)
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if el_pipe is not None:
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docs.append(el_pipe(d))
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else:
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docs.append(d)
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results = EvaluationResults()
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for doc, gold in zip(docs, golds):
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try:
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correct_entries_per_article = dict()
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for entity, kb_dict in gold.links.items():
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start, end = entity
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for gold_kb, value in kb_dict.items():
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if value:
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# only evaluating on positive examples
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offset = _offset(start, end)
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correct_entries_per_article[offset] = gold_kb
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for ent in doc.ents:
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ent_label = ent.label_
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pred_entity = ent.kb_id_
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start = ent.start_char
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end = ent.end_char
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offset = _offset(start, end)
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gold_entity = correct_entries_per_article.get(offset, None)
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# the gold annotations are not complete so we can't evaluate missing annotations as 'wrong'
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if gold_entity is not None:
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results.update_metrics(ent_label, gold_entity, pred_entity)
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except Exception as e:
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logging.error("Error assessing accuracy " + str(e))
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return results
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def measure_baselines(data, kb):
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"""
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Measure 3 performance baselines: random selection, prior probabilities, and 'oracle' prediction for upper bound.
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Only evaluate entities that overlap between gold and NER, to isolate the performance of the NEL.
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Also return a dictionary of counts by entity label.
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"""
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counts_d = dict()
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baseline_results = BaselineResults()
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docs = [d for d, g in data if len(d) > 0]
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golds = [g for d, g in data if len(d) > 0]
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for doc, gold in zip(docs, golds):
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correct_entries_per_article = dict()
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for entity, kb_dict in gold.links.items():
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start, end = entity
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for gold_kb, value in kb_dict.items():
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# only evaluating on positive examples
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if value:
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offset = _offset(start, end)
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correct_entries_per_article[offset] = gold_kb
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for ent in doc.ents:
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ent_label = ent.label_
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start = ent.start_char
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end = ent.end_char
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offset = _offset(start, end)
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gold_entity = correct_entries_per_article.get(offset, None)
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# the gold annotations are not complete so we can't evaluate missing annotations as 'wrong'
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if gold_entity is not None:
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candidates = kb.get_candidates(ent.text)
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oracle_candidate = ""
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prior_candidate = ""
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random_candidate = ""
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if candidates:
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scores = []
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for c in candidates:
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scores.append(c.prior_prob)
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if c.entity_ == gold_entity:
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oracle_candidate = c.entity_
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best_index = scores.index(max(scores))
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prior_candidate = candidates[best_index].entity_
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random_candidate = random.choice(candidates).entity_
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current_count = counts_d.get(ent_label, 0)
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counts_d[ent_label] = current_count+1
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baseline_results.update_baselines(
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gold_entity,
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ent_label,
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random_candidate,
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prior_candidate,
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oracle_candidate,
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)
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return baseline_results, counts_d
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def _offset(start, end):
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return "{}_{}".format(start, end)
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