Sentiment_Analysis / Sentiment_analysis_with_bert.py
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Upload Sentiment_analysis_with_bert.py
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!pip install -q -U watermark
!pip install -qq transformers
import transformers
from transformers import BertModel, BertTokenizer, AdamW, get_linear_schedule_with_warmup
import torch
import numpy as np
import pandas as pd
import seaborn as sns
from pylab import rcParams
import matplotlib.pyplot as plt
from matplotlib import rc
from sklearn.model_selection import train_test_split
from sklearn.metrics import confusion_matrix, classification_report
from collections import defaultdict
from textwrap import wrap
from torch import nn, optim
from torch.utils.data import Dataset, DataLoader
import torch.nn.functional as F
sns.set(style='whitegrid', palette='muted', font_scale=1.2)
HAPPY_COLORS_PALETTE = ["#01BEFE", "#FFDD00", "#FF7D00", "#FF006D", "#ADFF02", "#8F00FF"]
sns.set_palette(sns.color_palette(HAPPY_COLORS_PALETTE))
rcParams['figure.figsize'] = 12, 8
RANDOM_SEED = 42
np.random.seed(RANDOM_SEED)
torch.manual_seed(RANDOM_SEED)
device = torch.device("cuda:0" if torch.cuda.is_available() else "cpu")
!gdown --id 1S6qMioqPJjyBLpLVz4gmRTnJHnjitnuV
!gdown --id 1zdmewp7ayS4js4VtrJEHzAheSW-5NBZv
df = pd.read_csv("reviews.csv")
sns.countplot(x='score', data = df)
plt.xlabel('review score');
def to_sentiment(rating):
rating = int(rating)
if rating <= 2:
return 0
elif rating == 3:
return 1
else:
return 2
df['sentiment'] = df.score.apply(to_sentiment)
class_names = ['negative', 'neutral', 'positive']
print(df.sentiment)
ax = sns.countplot(x='sentiment', data = df)
plt.xlabel('review sentiment')
ax.set_xticklabels(class_names);
PRE_TRAINED_MODEL_NAME = 'bert-base-uncased'
tokenizer = BertTokenizer.from_pretrained(PRE_TRAINED_MODEL_NAME)
sample_txt = 'When was I last outside? I am stuck at home for 2 weeks.'
tokens = tokenizer.tokenize(sample_txt)
token_ids = tokenizer.convert_tokens_to_ids(tokens)
print(f' Sentence: {sample_txt}')
print(f' Tokens: {tokens}')
print(f'Token IDs: {token_ids}')
tokenizer.sep_token, tokenizer.sep_token_id
tokenizer.cls_token, tokenizer.cls_token_id
tokenizer.pad_token, tokenizer.pad_token_id
tokenizer.unk_token, tokenizer.unk_token_id
encoding = tokenizer.encode_plus(
sample_txt,
max_length=32,
add_special_tokens=True, # Add '[CLS]' and '[SEP]'
return_token_type_ids=False,
pad_to_max_length=True,
return_attention_mask=True,
return_tensors='pt', # Return PyTorch tensors
)
encoding.keys()
print(len(encoding['input_ids'][0]))
encoding['input_ids'][0]
print(len(encoding['attention_mask'][0]))
encoding['attention_mask']
tokenizer.convert_ids_to_tokens(encoding['input_ids'][0])
token_lens = []
for txt in df.content:
tokens = tokenizer.encode(txt, max_length=512)
token_lens.append(len(tokens))
sns.distplot(token_lens)
plt.xlim([0, 256]);
plt.xlabel('Token count');
MAX_LEN = 160
class GPReviewDataset(Dataset):
def __init__(self, reviews, targets, tokenizer, max_len):
self.reviews = reviews
self.targets = targets
self.tokenizer = tokenizer
self.max_len = max_len
def __len__(self):
return len(self.reviews)
def __getitem__(self, item):
review = str(self.reviews[item])
target = self.targets[item]
encoding = self.tokenizer.encode_plus(
review,
add_special_tokens=True,
max_length=self.max_len,
return_token_type_ids=False,
pad_to_max_length=True,
return_attention_mask=True,
return_tensors='pt',
)
return {
'review_text': review,
'input_ids': encoding['input_ids'].flatten(),
'attention_mask': encoding['attention_mask'].flatten(),
'targets': torch.tensor(target, dtype=torch.long)
}
df_train, df_test = train_test_split(df, test_size=0.1, random_state=RANDOM_SEED)
df_val, df_test = train_test_split(df_test, test_size=0.5, random_state=RANDOM_SEED)
df_train.shape, df_val.shape, df_test.shape
def create_data_loader(df, tokenizer, max_len, batch_size):
ds = GPReviewDataset(
reviews=df.content.to_numpy(),
targets=df.sentiment.to_numpy(),
tokenizer=tokenizer,
max_len=max_len
)
return DataLoader(
ds,
batch_size=batch_size,
num_workers=4
)
BATCH_SIZE = 16
train_data_loader = create_data_loader(df_train, tokenizer, MAX_LEN, BATCH_SIZE)
val_data_loader = create_data_loader(df_val, tokenizer, MAX_LEN, BATCH_SIZE)
test_data_loader = create_data_loader(df_test, tokenizer, MAX_LEN, BATCH_SIZE)
data = next(iter(train_data_loader))
data.keys()
print(data['input_ids'].shape)
print(data['attention_mask'].shape)
print(data['targets'].shape)
bert_model = BertModel.from_pretrained(PRE_TRAINED_MODEL_NAME)
last_hidden_state, pooled_output = bert_model(
input_ids=encoding['input_ids'],
attention_mask=encoding['attention_mask'],
return_dict = False
)
last_hidden_state.shape
bert_model.config.hidden_size
pooled_output.shape
class SentimentClassifier(nn.Module):
def __init__(self, n_classes):
super(SentimentClassifier, self).__init__()
self.bert = BertModel.from_pretrained(PRE_TRAINED_MODEL_NAME)
self.drop = nn.Dropout(p=0.3)
self.out = nn.Linear(self.bert.config.hidden_size, n_classes)
def forward(self, input_ids, attention_mask):
returned = self.bert(
input_ids=input_ids,
attention_mask=attention_mask
)
pooled_output = returned["pooler_output"]
output = self.drop(pooled_output)
return self.out(output)
model = SentimentClassifier(len(class_names))
model = model.to(device)
input_ids = data['input_ids'].to(device)
attention_mask = data['attention_mask'].to(device)
print(input_ids.shape) # batch size x seq length
print(attention_mask.shape) # batch size x seq length
F.softmax(model(input_ids, attention_mask), dim=1)
EPOCHS = 6
optimizer = AdamW(model.parameters(), lr=2e-5, correct_bias=False)
total_steps = len(train_data_loader) * EPOCHS
scheduler = get_linear_schedule_with_warmup(
optimizer,
num_warmup_steps=0,
num_training_steps=total_steps
)
loss_fn = nn.CrossEntropyLoss().to(device)
def train_epoch(
model,
data_loader,
loss_fn,
optimizer,
device,
scheduler,
n_examples
):
model = model.train()
losses = []
correct_predictions = 0
for d in data_loader:
input_ids = d["input_ids"].to(device)
attention_mask = d["attention_mask"].to(device)
targets = d["targets"].to(device)
outputs = model(
input_ids=input_ids,
attention_mask=attention_mask
)
_, preds = torch.max(outputs, dim=1)
loss = loss_fn(outputs, targets)
correct_predictions += torch.sum(preds == targets)
losses.append(loss.item())
loss.backward()
nn.utils.clip_grad_norm_(model.parameters(), max_norm=1.0)
optimizer.step()
scheduler.step()
optimizer.zero_grad()
return correct_predictions.double() / n_examples, np.mean(losses)
def eval_model(model, data_loader, loss_fn, device, n_examples):
model = model.eval()
losses = []
correct_predictions = 0
with torch.no_grad():
for d in data_loader:
input_ids = d["input_ids"].to(device)
attention_mask = d["attention_mask"].to(device)
targets = d["targets"].to(device)
outputs = model(
input_ids=input_ids,
attention_mask=attention_mask
)
_, preds = torch.max(outputs, dim=1)
loss = loss_fn(outputs, targets)
correct_predictions += torch.sum(preds == targets)
losses.append(loss.item())
return correct_predictions.double() / n_examples, np.mean(losses)
# Commented out IPython magic to ensure Python compatibility.
# %%time
#
# history = defaultdict(list)
# best_accuracy = 0
#
# for epoch in range(EPOCHS):
#
# print(f'Epoch {epoch + 1}/{EPOCHS}')
# print('-' * 10)
#
# train_acc, train_loss = train_epoch(
# model,
# train_data_loader,
# loss_fn,
# optimizer,
# device,
# scheduler,
# len(df_train)
# )
#
# print(f'Train loss {train_loss} accuracy {train_acc}')
#
# val_acc, val_loss = eval_model(
# model,
# val_data_loader,
# loss_fn,
# device,
# len(df_val)
# )
#
# print(f'Val loss {val_loss} accuracy {val_acc}')
# print()
#
# history['train_acc'].append(train_acc)
# history['train_loss'].append(train_loss)
# history['val_acc'].append(val_acc)
# history['val_loss'].append(val_loss)
#
# if val_acc > best_accuracy:
# torch.save(model.state_dict(), 'best_model_state.bin')
# best_accuracy = val_acc
print(history['train_acc'])
list_of_train_accuracy= [t.cpu().numpy() for t in history['train_acc']]
list_of_train_accuracy
print(history['val_acc'])
list_of_val_accuracy= [t.cpu().numpy() for t in history['val_acc']]
list_of_val_accuracy
plt.plot(list_of_train_accuracy, label='train accuracy')
plt.plot(list_of_val_accuracy, label='validation accuracy')
plt.title('Training history')
plt.ylabel('Accuracy')
plt.xlabel('Epoch')
plt.legend()
plt.ylim([0, 1]);
test_acc, _ = eval_model(
model,
test_data_loader,
loss_fn,
device,
len(df_test)
)
print(('\n'))
print('Test Accuracy : ', test_acc.item())
def get_predictions(model, data_loader):
model = model.eval()
review_texts = []
predictions = []
prediction_probs = []
real_values = []
with torch.no_grad():
for d in data_loader:
texts = d["review_text"]
input_ids = d["input_ids"].to(device)
attention_mask = d["attention_mask"].to(device)
targets = d["targets"].to(device)
outputs = model(
input_ids=input_ids,
attention_mask=attention_mask
)
_, preds = torch.max(outputs, dim=1)
probs = F.softmax(outputs, dim=1)
review_texts.extend(texts)
predictions.extend(preds)
prediction_probs.extend(probs)
real_values.extend(targets)
predictions = torch.stack(predictions).cpu()
prediction_probs = torch.stack(prediction_probs).cpu()
real_values = torch.stack(real_values).cpu()
return review_texts, predictions, prediction_probs, real_values
y_review_texts, y_pred, y_pred_probs, y_test = get_predictions(
model,
test_data_loader
)
print(classification_report(y_test, y_pred, target_names=class_names))
def show_confusion_matrix(confusion_matrix):
hmap = sns.heatmap(confusion_matrix, annot=True, fmt="d", cmap="Blues")
hmap.yaxis.set_ticklabels(hmap.yaxis.get_ticklabels(), rotation=0, ha='right')
hmap.xaxis.set_ticklabels(hmap.xaxis.get_ticklabels(), rotation=30, ha='right')
plt.ylabel('True sentiment')
plt.xlabel('Predicted sentiment');
cm = confusion_matrix(y_test, y_pred)
df_cm = pd.DataFrame(cm, index=class_names, columns=class_names)
show_confusion_matrix(df_cm)
idx = 2
review_text = y_review_texts[idx]
true_sentiment = y_test[idx]
pred_df = pd.DataFrame({
'class_names': class_names,
'values': y_pred_probs[idx]
})
print("\n".join(wrap(review_text)))
print()
print(f'True sentiment: {class_names[true_sentiment]}')
sns.barplot(x='values', y='class_names', data=pred_df, orient='h')
plt.ylabel('sentiment')
plt.xlabel('probability')
plt.xlim([0, 1]);
review_text = input("Enter a comment for sentiment analysis: ")
encoded_review = tokenizer.encode_plus(
review_text,
max_length=MAX_LEN,
add_special_tokens=True,
return_token_type_ids=False,
pad_to_max_length=True,
return_attention_mask=True,
return_tensors='pt',
)
input_ids = encoded_review['input_ids'].to(device)
attention_mask = encoded_review['attention_mask'].to(device)
output = model(input_ids, attention_mask)
_, prediction = torch.max(output, dim=1)
print(f'Review text: {review_text}')
print(f'Sentiment : {class_names[prediction]}')
def suggest_improved_text(review_text, model, tokenizer):
# Analyse du sentiment du texte d'origine
sentiment = analyze_sentiment(review_text, model, tokenizer)
# Si le sentiment est négatif ou neutre, générer une version améliorée plus positive
if sentiment in ['negative', 'neutral']:
# Prétraitement du texte
encoded_input = tokenizer.encode_plus(
review_text,
max_length=MAX_LEN,
add_special_tokens=True,
return_token_type_ids=False,
pad_to_max_length=True,
return_attention_mask=True,
return_tensors='pt'
)
input_ids = encoded_input['input_ids'].to(device)
attention_mask = encoded_input['attention_mask'].to(device)
outputs = model(input_ids, attention_mask)
_, predicted_sentiment = torch.max(outputs, dim=1)
improved_text = generate_improved_text(text, predicted_sentiment)
return improved_text
return review_text
def analyze_sentiment(review_text, model, tokenizer):
encoded_input = tokenizer.encode_plus(
review_text,
max_length=MAX_LEN,
add_special_tokens=True,
return_token_type_ids=False,
pad_to_max_length=True,
return_attention_mask=True,
return_tensors='pt'
)
input_ids = encoded_input['input_ids'].to(device)
attention_mask = encoded_input['attention_mask'].to(device)
outputs = model(input_ids, attention_mask)
_, predicted_sentiment = torch.max(outputs, dim=1)
return class_names[predicted_sentiment]
def generate_improved_text(review_text, predicted_sentiment):
positive_words = ["marvellous", "fantastic", "excellent", "admirable", "formidable"]
if predicted_sentiment == 0:
improved_text = review_text + " " + " ".join(positive_words)
else:
improved_text = review_text
return improved_text