353 lines
14 KiB
Python
353 lines
14 KiB
Python
import os
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from abc import ABCMeta, abstractmethod
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from pathlib import Path
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import numpy as np
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import torch
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import torch.nn as nn
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import torch.nn.functional as F
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from sklearn.metrics import accuracy_score, f1_score
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from torch.nn.utils.rnn import pad_sequence
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from tqdm import tqdm
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import quapy as qp
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from quapy.data import LabelledCollection
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from quapy.util import EarlyStop
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class NeuralClassifierTrainer:
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def __init__(self,
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net, # TextClassifierNet
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lr=1e-3,
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weight_decay=0,
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patience=10,
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epochs=200,
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batch_size=64,
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batch_size_test=512,
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padding_length=300,
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device='cpu',
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checkpointpath='../checkpoint/classifier_net.dat'):
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super().__init__()
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assert isinstance(net, TextClassifierNet), f'net is not an instance of {TextClassifierNet.__name__}'
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self.net = net.to(device)
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self.vocab_size = self.net.vocabulary_size
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self.trainer_hyperparams={
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'lr': lr,
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'weight_decay': weight_decay,
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'patience': patience,
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'epochs': epochs,
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'batch_size': batch_size,
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'batch_size_test': batch_size_test,
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'padding_length': padding_length,
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'device': torch.device(device)
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}
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self.learner_hyperparams = self.net.get_params()
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self.checkpointpath = checkpointpath
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self.classes_ = np.asarray([0, 1])
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print(f'[NeuralNetwork running on {device}]')
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os.makedirs(Path(checkpointpath).parent, exist_ok=True)
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def reset_net_params(self, vocab_size, n_classes):
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self.net = self.net.__class__(vocab_size, n_classes, **self.learner_hyperparams)
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self.net = self.net.to(self.trainer_hyperparams['device'])
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self.net.xavier_uniform()
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def get_params(self):
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return {**self.net.get_params(), **self.trainer_hyperparams}
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def set_params(self, **params):
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trainer_hyperparams = self.trainer_hyperparams
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learner_hyperparams = self.net.get_params()
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for key, val in params.items():
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if key in trainer_hyperparams and key in learner_hyperparams:
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raise ValueError(f'the use of parameter {key} is ambiguous since it can refer to '
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f'a parameters of the Trainer or the learner {self.net.__name__}')
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elif key not in trainer_hyperparams and key not in learner_hyperparams:
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raise ValueError(f'parameter {key} is not valid')
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if key in trainer_hyperparams:
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trainer_hyperparams[key] = val
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else:
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learner_hyperparams[key] = val
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self.trainer_hyperparams = trainer_hyperparams
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self.learner_hyperparams = learner_hyperparams
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@property
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def device(self):
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return next(self.net.parameters()).device
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def _train_epoch(self, data, status, pbar, epoch):
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self.net.train()
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criterion = torch.nn.CrossEntropyLoss()
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losses, predictions, true_labels = [], [], []
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for xi, yi in data:
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self.optim.zero_grad()
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logits = self.net.forward(xi)
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loss = criterion(logits, yi)
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loss.backward()
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self.optim.step()
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losses.append(loss.item())
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preds = torch.softmax(logits, dim=-1).detach().cpu().numpy().argmax(axis=-1)
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status["loss"] = np.mean(losses)
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predictions.extend(preds.tolist())
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true_labels.extend(yi.detach().cpu().numpy().tolist())
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status["acc"] = accuracy_score(true_labels, predictions)
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status["f1"] = f1_score(true_labels, predictions, average='macro')
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self.__update_progress_bar(pbar, epoch)
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def _test_epoch(self, data, status, pbar, epoch):
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self.net.eval()
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criterion = torch.nn.CrossEntropyLoss()
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losses, predictions, true_labels = [], [], []
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with torch.no_grad():
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for xi, yi in data:
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logits = self.net.forward(xi)
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loss = criterion(logits, yi)
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losses.append(loss.item())
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preds = torch.softmax(logits, dim=-1).detach().cpu().numpy().argmax(axis=-1)
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predictions.extend(preds.tolist())
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true_labels.extend(yi.detach().cpu().numpy().tolist())
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status["loss"] = np.mean(losses)
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status["acc"] = accuracy_score(true_labels, predictions)
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status["f1"] = f1_score(true_labels, predictions, average='macro')
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self.__update_progress_bar(pbar, epoch)
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def __update_progress_bar(self, pbar, epoch):
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pbar.set_description(f'[{self.net.__class__.__name__}] training epoch={epoch} '
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f'tr-loss={self.status["tr"]["loss"]:.5f} '
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f'tr-acc={100 * self.status["tr"]["acc"]:.2f}% '
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f'tr-macroF1={100 * self.status["tr"]["f1"]:.2f}% '
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f'patience={self.early_stop.patience}/{self.early_stop.PATIENCE_LIMIT} '
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f'val-loss={self.status["va"]["loss"]:.5f} '
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f'val-acc={100 * self.status["va"]["acc"]:.2f}% '
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f'macroF1={100 * self.status["va"]["f1"]:.2f}%')
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def fit(self, instances, labels, val_split=0.3):
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train, val = LabelledCollection(instances, labels).split_stratified(1-val_split)
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opt = self.trainer_hyperparams
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checkpoint = self.checkpointpath
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self.reset_net_params(self.vocab_size, train.n_classes)
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train_generator = TorchDataset(train.instances, train.labels).asDataloader(
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opt['batch_size'], shuffle=True, pad_length=opt['padding_length'], device=opt['device'])
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valid_generator = TorchDataset(val.instances, val.labels).asDataloader(
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opt['batch_size_test'], shuffle=False, pad_length=opt['padding_length'], device=opt['device'])
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self.status = {'tr': {'loss': -1, 'acc': -1, 'f1': -1},
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'va': {'loss': -1, 'acc': -1, 'f1': -1}}
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self.optim = torch.optim.Adam(self.net.parameters(), lr=opt['lr'], weight_decay=opt['weight_decay'])
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self.early_stop = EarlyStop(opt['patience'], lower_is_better=False)
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with tqdm(range(1, opt['epochs'] + 1)) as pbar:
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for epoch in pbar:
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self._train_epoch(train_generator, self.status['tr'], pbar, epoch)
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self._test_epoch(valid_generator, self.status['va'], pbar, epoch)
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self.early_stop(self.status['va']['f1'], epoch)
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if self.early_stop.IMPROVED:
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torch.save(self.net.state_dict(), checkpoint)
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elif self.early_stop.STOP:
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print(f'training ended by patience exhasted; loading best model parameters in {checkpoint} '
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f'for epoch {self.early_stop.best_epoch}')
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self.net.load_state_dict(torch.load(checkpoint))
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break
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print('performing one training pass over the validation set...')
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self._train_epoch(valid_generator, self.status['tr'], pbar, epoch=0)
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print('[done]')
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return self
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def predict(self, instances):
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return np.argmax(self.predict_proba(instances), axis=-1)
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def predict_proba(self, instances):
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self.net.eval()
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opt = self.trainer_hyperparams
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with torch.no_grad():
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positive_probs = []
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for xi in TorchDataset(instances).asDataloader(
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opt['batch_size_test'], shuffle=False, pad_length=opt['padding_length'], device=opt['device']):
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positive_probs.append(self.net.predict_proba(xi))
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return np.concatenate(positive_probs)
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def transform(self, instances):
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self.net.eval()
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embeddings = []
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opt = self.trainer_hyperparams
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with torch.no_grad():
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for xi in TorchDataset(instances).asDataloader(
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opt['batch_size_test'], shuffle=False, pad_length=opt['padding_length'], device=opt['device']):
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embeddings.append(self.net.document_embedding(xi).detach().cpu().numpy())
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return np.concatenate(embeddings)
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class TorchDataset(torch.utils.data.Dataset):
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def __init__(self, instances, labels=None):
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self.instances = instances
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self.labels = labels
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def __len__(self):
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return len(self.instances)
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def __getitem__(self, index):
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return {'doc': self.instances[index], 'label': self.labels[index] if self.labels is not None else None}
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def asDataloader(self, batch_size, shuffle, pad_length, device):
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def collate(batch):
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data = [torch.LongTensor(item['doc'][:pad_length]) for item in batch]
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data = pad_sequence(data, batch_first=True, padding_value=qp.environ['PAD_INDEX']).to(device)
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targets = [item['label'] for item in batch]
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if targets[0] is None:
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return data
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else:
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targets = torch.as_tensor(targets, dtype=torch.long).to(device)
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return [data, targets]
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torchDataset = TorchDataset(self.instances, self.labels)
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return torch.utils.data.DataLoader(torchDataset, batch_size=batch_size, shuffle=shuffle, collate_fn=collate)
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class TextClassifierNet(torch.nn.Module, metaclass=ABCMeta):
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@abstractmethod
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def document_embedding(self, x): ...
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def forward(self, x):
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doc_embedded = self.document_embedding(x)
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return self.output(doc_embedded)
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def dimensions(self):
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return self.dim
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def predict_proba(self, x):
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logits = self(x)
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return torch.softmax(logits, dim=1).detach().cpu().numpy()
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def xavier_uniform(self):
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for p in self.parameters():
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if p.dim() > 1 and p.requires_grad:
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torch.nn.init.xavier_uniform_(p)
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@abstractmethod
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def get_params(self): ...
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@property
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def vocabulary_size(self): ...
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class LSTMnet(TextClassifierNet):
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def __init__(self, vocabulary_size, n_classes, embedding_size=100, hidden_size=256, repr_size=100, lstm_nlayers=1,
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drop_p=0.5):
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super().__init__()
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self.vocabulary_size_ = vocabulary_size
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self.n_classes = n_classes
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self.hyperparams={
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'embedding_size': embedding_size,
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'hidden_size': hidden_size,
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'repr_size': repr_size,
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'lstm_nlayers': lstm_nlayers,
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'drop_p': drop_p
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}
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self.word_embedding = torch.nn.Embedding(vocabulary_size, embedding_size)
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self.lstm = torch.nn.LSTM(embedding_size, hidden_size, lstm_nlayers, dropout=drop_p, batch_first=True)
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self.dropout = torch.nn.Dropout(drop_p)
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self.dim = repr_size
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self.doc_embedder = torch.nn.Linear(hidden_size, self.dim)
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self.output = torch.nn.Linear(self.dim, n_classes)
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def init_hidden(self, set_size):
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opt = self.hyperparams
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var_hidden = torch.zeros(opt['lstm_nlayers'], set_size, opt['lstm_hidden_size'])
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var_cell = torch.zeros(opt['lstm_nlayers'], set_size, opt['lstm_hidden_size'])
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if next(self.lstm.parameters()).is_cuda:
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var_hidden, var_cell = var_hidden.cuda(), var_cell.cuda()
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return var_hidden, var_cell
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def document_embedding(self, x):
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embedded = self.word_embedding(x)
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rnn_output, rnn_hidden = self.lstm(embedded, self.init_hidden(x.size()[0]))
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abstracted = self.dropout(F.relu(rnn_hidden[0][-1]))
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abstracted = self.doc_embedder(abstracted)
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return abstracted
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def get_params(self):
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return self.hyperparams
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@property
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def vocabulary_size(self):
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return self.vocabulary_size_
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class CNNnet(TextClassifierNet):
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def __init__(self, vocabulary_size, n_classes, embedding_size=100, hidden_size=256, repr_size=100,
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kernel_heights=[3, 5, 7], stride=1, padding=0, drop_p=0.5):
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super(CNNnet, self).__init__()
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self.vocabulary_size_ = vocabulary_size
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self.n_classes = n_classes
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self.hyperparams={
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'embedding_size': embedding_size,
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'hidden_size': hidden_size,
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'repr_size': repr_size,
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'kernel_heights':kernel_heights,
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'stride': stride,
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'drop_p': drop_p
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}
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self.word_embedding = torch.nn.Embedding(vocabulary_size, embedding_size)
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in_channels = 1
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self.conv1 = nn.Conv2d(in_channels, hidden_size, (kernel_heights[0], embedding_size), stride, padding)
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self.conv2 = nn.Conv2d(in_channels, hidden_size, (kernel_heights[1], embedding_size), stride, padding)
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self.conv3 = nn.Conv2d(in_channels, hidden_size, (kernel_heights[2], embedding_size), stride, padding)
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self.dropout = nn.Dropout(drop_p)
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self.dim = repr_size
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self.doc_embedder = torch.nn.Linear(len(kernel_heights) * hidden_size, self.dim)
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self.output = nn.Linear(self.dim, n_classes)
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def conv_block(self, input, conv_layer):
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conv_out = conv_layer(input) # conv_out.size() = (batch_size, out_channels, dim, 1)
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activation = F.relu(conv_out.squeeze(3)) # activation.size() = (batch_size, out_channels, dim1)
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max_out = F.max_pool1d(activation, activation.size()[2]).squeeze(2) # maxpool_out.size() = (batch_size, out_channels)
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return max_out
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def document_embedding(self, input):
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input = self.word_embedding(input)
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input = input.unsqueeze(1) # input.size() = (batch_size, 1, num_seq, embedding_length)
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max_out1 = self.conv_block(input, self.conv1)
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max_out2 = self.conv_block(input, self.conv2)
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max_out3 = self.conv_block(input, self.conv3)
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all_out = torch.cat((max_out1, max_out2, max_out3), 1) # all_out.size() = (batch_size, num_kernels*out_channels)
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abstracted = self.dropout(F.relu(all_out)) # (batch_size, num_kernels*out_channels)
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abstracted = self.doc_embedder(abstracted)
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return abstracted
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def get_params(self):
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return self.hyperparams
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@property
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def vocabulary_size(self):
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return self.vocabulary_size_
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