mirror of https://github.com/explosion/spaCy.git
fix concat bp and more efficient batch calls
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0a15ee4541
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2fa3fac851
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@ -52,27 +52,25 @@ class EL_Model:
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# raise errors instead of runtime warnings in case of int/float overflow
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np.seterr(all='raise')
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Doc.set_extension("entity_id", default=None)
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train_inst, train_pos, train_neg, train_texts = self._get_training_data(training_dir,
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entity_descr_output,
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False,
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trainlimit,
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to_print=False)
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train_inst, train_pos, train_neg, train_doc = self._get_training_data(training_dir,
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entity_descr_output,
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False,
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trainlimit,
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to_print=False)
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dev_inst, dev_pos, dev_neg, dev_doc = self._get_training_data(training_dir,
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entity_descr_output,
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True,
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devlimit,
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to_print=False)
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dev_inst, dev_pos, dev_neg, dev_texts = self._get_training_data(training_dir,
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entity_descr_output,
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True,
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devlimit,
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to_print=False)
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self._begin_training()
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print()
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self._test_dev(train_inst, train_pos, train_neg, train_doc, print_string="train_random", calc_random=True)
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self._test_dev(dev_inst, dev_pos, dev_neg, dev_doc, print_string="dev_random", calc_random=True)
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self._test_dev(train_inst, train_pos, train_neg, train_texts, print_string="train_random", calc_random=True)
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self._test_dev(dev_inst, dev_pos, dev_neg, dev_texts, print_string="dev_random", calc_random=True)
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print()
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self._test_dev(train_inst, train_pos, train_neg, train_doc, print_string="train_pre", avg=False)
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self._test_dev(dev_inst, dev_pos, dev_neg, dev_doc, print_string="dev_pre", avg=False)
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self._test_dev(train_inst, train_pos, train_neg, train_texts, print_string="train_pre", avg=False)
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self._test_dev(dev_inst, dev_pos, dev_neg, dev_texts, print_string="dev_pre", avg=False)
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instance_pos_count = 0
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instance_neg_count = 0
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@ -99,26 +97,22 @@ class EL_Model:
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# print()
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# print(article_count, "Training on article", article_id)
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article_count += 1
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article_docs = list()
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article_text = train_texts[article_id]
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entities = list()
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golds = list()
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for inst_cluster in inst_cluster_set:
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article_docs.append(train_doc[article_id])
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entities.append(train_pos.get(inst_cluster))
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golds.append(float(1.0))
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instance_pos_count += 1
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for neg_entity in train_neg.get(inst_cluster, []):
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article_docs.append(train_doc[article_id])
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entities.append(neg_entity)
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golds.append(float(0.0))
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instance_neg_count += 1
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self.update(article_docs=article_docs, entities=entities, golds=golds)
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self.update(article_text=article_text, entities=entities, golds=golds)
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# dev eval
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# self._test_dev(dev_inst, dev_pos, dev_neg, dev_doc, print_string="dev_inter", avg=False)
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self._test_dev(dev_inst, dev_pos, dev_neg, dev_doc, print_string="dev_inter_avg", avg=True)
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print()
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self._test_dev(dev_inst, dev_pos, dev_neg, dev_texts, print_string="dev_inter_avg", avg=True)
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except ValueError as e:
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print("Error in article id", article_id)
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@ -127,13 +121,9 @@ class EL_Model:
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print("Trained on", instance_pos_count, "/", instance_neg_count, "instances pos/neg")
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if self.PRINT_TRAIN:
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# print()
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# self._test_dev(train_inst, train_pos, train_neg, train_doc, print_string="train_post", avg=False)
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self._test_dev(train_inst, train_pos, train_neg, train_doc, print_string="train_post_avg", avg=True)
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# self._test_dev(dev_inst, dev_pos, dev_neg, dev_doc, print_string="dev_post", avg=False)
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# self._test_dev(dev_inst, dev_pos, dev_neg, dev_doc, print_string="dev_post_avg", avg=True)
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self._test_dev(train_inst, train_pos, train_neg, train_texts, print_string="train_post_avg", avg=True)
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def _test_dev(self, instances, pos, neg, doc, print_string, avg=False, calc_random=False):
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def _test_dev(self, instances, pos, neg, texts_by_id, print_string, avg=False, calc_random=False):
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predictions = list()
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golds = list()
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@ -144,22 +134,18 @@ class EL_Model:
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article = inst_cluster.split(sep="_")[0]
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entity_id = inst_cluster.split(sep="_")[1]
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article_doc = doc[article]
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article_doc = self.nlp(texts_by_id[article])
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entities = [self.nlp(pos_ex)]
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golds.append(float(1.0))
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for neg_ex in neg_exs:
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entities.append(self.nlp(neg_ex))
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golds.append(float(0.0))
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if calc_random:
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prediction = self._predict_random(entity=pos_ex)
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preds = self._predict_random(entities=entities)
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else:
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prediction = self._predict(article_doc=article_doc, entity=pos_ex, avg=avg)
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predictions.append(prediction)
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golds.append(float(1.0))
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for neg_ex in neg_exs:
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if calc_random:
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prediction = self._predict_random(entity=neg_ex)
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else:
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prediction = self._predict(article_doc=article_doc, entity=neg_ex, avg=avg)
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predictions.append(prediction)
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golds.append(float(0.0))
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preds = self._predict(article_doc=article_doc, entities=entities, avg=avg)
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predictions.extend(preds)
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# TODO: combine with prior probability
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p, r, f = run_el.evaluate(predictions, golds, to_print=False)
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@ -172,39 +158,38 @@ class EL_Model:
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return loss, p, r, f
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def _predict(self, article_doc, entity, avg=False, apply_threshold=True):
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def _predict(self, article_doc, entities, avg=False, apply_threshold=True):
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if avg:
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with self.article_encoder.use_params(self.sgd_article.averages) \
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and self.entity_encoder.use_params(self.sgd_entity.averages):
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doc_encoding = self.article_encoder([article_doc])[0]
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entity_encoding = self.entity_encoder([entity])[0]
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entity_encodings = self.entity_encoder(entities)
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else:
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doc_encoding = self.article_encoder([article_doc])[0]
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entity_encoding = self.entity_encoder([entity])[0]
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entity_encodings = self.entity_encoder(entities)
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concat_encoding = list(entity_encoding) + list(doc_encoding)
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np_array = np.asarray([concat_encoding])
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concat_encodings = [list(entity_encodings[i]) + list(doc_encoding) for i in range(len(entities))]
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np_array_list = np.asarray(concat_encodings)
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if avg:
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with self.model.use_params(self.sgd.averages):
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prediction = self.model(np_array)
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with self.model.use_params(self.sgd.averages):
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predictions = self.model(np_array_list)
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else:
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prediction = self.model(np_array)
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predictions = self.model(np_array_list)
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if not apply_threshold:
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return float(prediction)
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if prediction > self.CUTOFF:
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return float(1.0)
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return float(0.0)
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predictions = self.model.ops.flatten(predictions)
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predictions = [float(p) for p in predictions]
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if apply_threshold:
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predictions = [float(1.0) if p > self.CUTOFF else float(0.0) for p in predictions]
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def _predict_random(self, entity, apply_threshold=True):
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r = random.uniform(0, 1)
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return predictions
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def _predict_random(self, entities, apply_threshold=True):
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if not apply_threshold:
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return r
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if r > self.CUTOFF:
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return float(1.0)
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return float(0.0)
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return [float(random.uniform(0,1)) for e in entities]
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else:
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return [float(1.0) if random.uniform(0,1) > self.CUTOFF else float(0.0) for e in entities]
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def _build_cnn(self, hidden_entity_width, hidden_article_width):
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with Model.define_operators({">>": chain, "|": concatenate, "**": clone}):
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@ -252,20 +237,27 @@ class EL_Model:
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loss = (d_scores ** 2).sum()
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return loss, d_scores
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def update(self, article_docs, entities, golds, apply_threshold=True):
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doc_encodings, bp_doc = self.article_encoder.begin_update(article_docs, drop=self.DROP)
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# print("doc_encodings", len(doc_encodings), doc_encodings)
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# TODO: multiple docs/articles
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def update(self, article_text, entities, golds, apply_threshold=True):
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article_doc = self.nlp(article_text)
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doc_encodings, bp_doc = self.article_encoder.begin_update([article_doc], drop=self.DROP)
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doc_encoding = doc_encodings[0]
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entity_encodings, bp_entity = self.entity_encoder.begin_update(entities, drop=self.DROP)
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entity_docs = list(self.nlp.pipe(entities))
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# print("entity_docs", type(entity_docs))
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entity_encodings, bp_entity = self.entity_encoder.begin_update(entity_docs, drop=self.DROP)
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# print("entity_encodings", len(entity_encodings), entity_encodings)
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concat_encodings = [list(entity_encodings[i]) + list(doc_encodings[i]) for i in range(len(entities))]
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concat_encodings = [list(entity_encodings[i]) + list(doc_encoding) for i in range(len(entities))]
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# print("concat_encodings", len(concat_encodings), concat_encodings)
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predictions, bp_model = self.model.begin_update(np.asarray(concat_encodings), drop=self.DROP)
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predictions = self.model.ops.flatten(predictions)
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# print("predictions", predictions)
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golds = self.model.ops.asarray(golds)
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# print("golds", golds)
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loss, d_scores = self.get_loss(predictions, golds)
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@ -275,7 +267,7 @@ class EL_Model:
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if self.PRINT_F and self.PRINT_TRAIN:
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predictions_f = [x for x in predictions]
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if apply_threshold:
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predictions_f = [1.0 if x > self.CUTOFF else 0.0 for x in predictions_f]
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predictions_f = [float(1.0) if x > self.CUTOFF else float(0.0) for x in predictions_f]
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p, r, f = run_el.evaluate(predictions_f, golds, to_print=False)
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print("p/r/F train", round(p, 1), round(r, 1), round(f, 1))
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@ -286,17 +278,17 @@ class EL_Model:
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model_gradient = bp_model(d_scores, sgd=self.sgd)
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# print("model_gradient", model_gradient)
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doc_gradient = list()
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entity_gradient = list()
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# concat = entity + doc, but doc is the same within this function (TODO: multiple docs/articles)
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doc_gradient = model_gradient[0][self.ENTITY_WIDTH:]
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entity_gradients = list()
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for x in model_gradient:
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doc_gradient.append(list(x[0:self.ARTICLE_WIDTH]))
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entity_gradient.append(list(x[self.ARTICLE_WIDTH:]))
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entity_gradients.append(list(x[0:self.ENTITY_WIDTH]))
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# print("doc_gradient", doc_gradient)
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# print("entity_gradient", entity_gradient)
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# print("entity_gradients", entity_gradients)
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bp_doc(doc_gradient, sgd=self.sgd_article)
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bp_entity(entity_gradient, sgd=self.sgd_entity)
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bp_doc([doc_gradient], sgd=self.sgd_article)
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bp_entity(entity_gradients, sgd=self.sgd_entity)
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def _get_training_data(self, training_dir, entity_descr_output, dev, limit, to_print):
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id_to_descr = kb_creator._get_id_to_description(entity_descr_output)
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@ -305,9 +297,9 @@ class EL_Model:
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collect_correct=True,
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collect_incorrect=True)
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instance_by_doc = dict()
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instance_by_article = dict()
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local_vectors = list() # TODO: local vectors
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doc_by_article = dict()
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text_by_article = dict()
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pos_entities = dict()
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neg_entities = dict()
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@ -319,33 +311,28 @@ class EL_Model:
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if cnt % 500 == 0 and to_print:
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print(datetime.datetime.now(), "processed", cnt, "files in the training dataset")
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cnt += 1
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if article_id not in doc_by_article:
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if article_id not in text_by_article:
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with open(os.path.join(training_dir, f), mode="r", encoding='utf8') as file:
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text = file.read()
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doc = self.nlp(text)
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doc_by_article[article_id] = doc
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instance_by_doc[article_id] = set()
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text_by_article[article_id] = text
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instance_by_article[article_id] = set()
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for mention, entity_pos in correct_entries[article_id].items():
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descr = id_to_descr.get(entity_pos)
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if descr:
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instance_by_doc[article_id].add(article_id + "_" + mention)
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doc_descr = self.nlp(descr)
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doc_descr._.entity_id = entity_pos
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pos_entities[article_id + "_" + mention] = doc_descr
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instance_by_article[article_id].add(article_id + "_" + mention)
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pos_entities[article_id + "_" + mention] = descr
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for mention, entity_negs in incorrect_entries[article_id].items():
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for entity_neg in entity_negs:
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descr = id_to_descr.get(entity_neg)
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if descr:
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doc_descr = self.nlp(descr)
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doc_descr._.entity_id = entity_neg
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descr_list = neg_entities.get(article_id + "_" + mention, [])
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descr_list.append(doc_descr)
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descr_list.append(descr)
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neg_entities[article_id + "_" + mention] = descr_list
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if to_print:
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print()
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print("Processed", cnt, "training articles, dev=" + str(dev))
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print()
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return instance_by_doc, pos_entities, neg_entities, doc_by_article
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return instance_by_article, pos_entities, neg_entities, text_by_article
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@ -111,7 +111,7 @@ if __name__ == "__main__":
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print("STEP 6: training", datetime.datetime.now())
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my_nlp = spacy.load('en_core_web_md')
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trainer = EL_Model(kb=my_kb, nlp=my_nlp)
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trainer.train_model(training_dir=TRAINING_DIR, entity_descr_output=ENTITY_DESCR, trainlimit=1000, devlimit=200)
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trainer.train_model(training_dir=TRAINING_DIR, entity_descr_output=ENTITY_DESCR, trainlimit=10, devlimit=10)
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print()
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# STEP 7: apply the EL algorithm on the dev dataset
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