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# -*- coding: utf-8 -*-
"""Sentiment_analysis.ipynb

Automatically generated by Colaboratory.

Original file is located at
    https://colab.research.google.com/drive/1EHgMQQJzwbNja0JVMM2DVvrVTMHIS3Vg
"""

!pip install transformers

import pandas as pd
from wordcloud import WordCloud
import seaborn as sns
import re
import string
from collections import Counter, defaultdict

from sklearn.feature_extraction.text import CountVectorizer, TfidfVectorizer

import plotly.express as px
from plotly.subplots import make_subplots
import plotly.graph_objects as go
from plotly.offline import plot

import matplotlib.gridspec as gridspec
from matplotlib.ticker import MaxNLocator
import matplotlib.patches as mpatches
import matplotlib.pyplot as plt
import warnings
warnings.filterwarnings('ignore')
import nltk
nltk.download('stopwords')
from nltk.corpus import stopwords
stopWords_nltk = set(stopwords.words('english'))


import re
from typing import Union, List

class CleanText():
    """ clearing text except digits () . , word character """

    def __init__(self, clean_pattern = r"[^A-ZĞÜŞİÖÇIa-zğüı'şöç0-9.\"',()]"):
        self.clean_pattern =clean_pattern

    def __call__(self, text: Union[str, list]) -> str:

        if isinstance(text, str):
            docs = [[text]]

        if isinstance(text, list):
            docs = text

        text = [[re.sub(self.clean_pattern, " ", sent) for sent in sents] for sents in docs]

        # Join the list of lists into a single string
        text = ' '.join([' '.join(sents) for sents in text])

        return text

def remove_emoji(data):
    emoj = re.compile("["
        u"\U0001F600-\U0001F64F"  # emoticons
        u"\U0001F300-\U0001F5FF"  # symbols & pictographs
        u"\U0001F680-\U0001F6FF"  # transport & map symbols
        u"\U0001F1E0-\U0001F1FF"  # flags (iOS)
        u"\U00002500-\U00002BEF"
        u"\U00002702-\U000027B0"
        u"\U00002702-\U000027B0"
        u"\U000024C2-\U0001F251"
        u"\U0001f926-\U0001f937"
        u"\U00010000-\U0010ffff"
        u"\u2640-\u2642"
        u"\u2600-\u2B55"
        u"\u200d"
        u"\u23cf"
        u"\u23e9"
        u"\u231a"
        u"\ufe0f"  # dingbats
        u"\u3030"
                      "]+", re.UNICODE)
    return re.sub(emoj, '', data)

def tokenize(text):
    """ basic tokenize method with word character, non word character and digits """
    text = re.sub(r" +", " ", str(text))
    text = re.split(r"(\d+|[a-zA-ZğüşıöçĞÜŞİÖÇ]+|\W)", text)
    text = list(filter(lambda x: x != '' and x != ' ', text))
    sent_tokenized = ' '.join(text)
    return sent_tokenized

regex = re.compile('[%s]' % re.escape(string.punctuation))

def remove_punct(text):
    text = regex.sub(" ", text)
    return text

clean = CleanText()

def label_encode(x):
    if x == 1 or x == 2:
        return 0
    if x == 3:
        return 1
    if x == 5 or x == 4:
        return 2

def label2name(x):
    if x == 0:
        return "Negative"
    if x == 1:
        return "Neutral"
    if x == 2:
        return "Positive"

from google.colab import files
uploaded = files.upload()
df = pd.read_csv('tripadvisor_hotel_reviews.csv')

print("df.columns: ", df.columns)

fig = px.histogram(df,
             x = 'Rating',
             title = 'Histogram of Review Rating',
             template = 'ggplot2',
             color = 'Rating',
             color_discrete_sequence= px.colors.sequential.Blues_r,
             opacity = 0.8,
             height = 525,
             width = 835,
            )

fig.update_yaxes(title='Count')
fig.show()

df.info()

df["label"] = df["Rating"].apply(lambda x: label_encode(x))
df["label_name"] = df["label"].apply(lambda x: label2name(x))

df["Review"] = df["Review"].apply(lambda x: remove_punct(clean(remove_emoji(x).lower())[0][0]))

df.head()

fig = make_subplots(rows=1, cols=2, specs=[[{"type": "pie"}, {"type": "bar"}]])
colors = ['gold', 'mediumturquoise', 'lightgreen'] # darkorange
fig.add_trace(go.Pie(labels=df.label_name.value_counts().index,
                             values=df.label.value_counts().values), 1, 1)

fig.update_traces(hoverinfo='label+percent', textfont_size=20,
                  marker=dict(colors=colors, line=dict(color='#000000', width=2)))

fig.add_trace(go.Bar(x=df.label_name.value_counts().index, y=df.label.value_counts().values, marker_color = colors), 1,2)

fig.show()

import pandas as pd
import numpy as np
import os
import random
from pathlib import Path
import json

import torch
from tqdm.notebook import tqdm

from transformers import BertTokenizer
from torch.utils.data import TensorDataset

from transformers import BertForSequenceClassification

class Config():
    seed_val = 17
    device = torch.device("cuda:0" if torch.cuda.is_available() else "cpu")
    epochs = 5
    batch_size = 6
    seq_length = 512
    lr = 2e-5
    eps = 1e-8
    pretrained_model = 'bert-base-uncased'
    test_size=0.15
    random_state=42
    add_special_tokens=True
    return_attention_mask=True
    pad_to_max_length=True
    do_lower_case=False
    return_tensors='pt'
config = Config()

# params will be saved after training
params = {"seed_val": config.seed_val,
    "device":str(config.device),
    "epochs":config.epochs,
    "batch_size":config.batch_size,
    "seq_length":config.seq_length,
    "lr":config.lr,
    "eps":config.eps,
    "pretrained_model": config.pretrained_model,
    "test_size":config.test_size,
    "random_state":config.random_state,
    "add_special_tokens":config.add_special_tokens,
    "return_attention_mask":config.return_attention_mask,
    "pad_to_max_length":config.pad_to_max_length,
    "do_lower_case":config.do_lower_case,
    "return_tensors":config.return_tensors,
         }

import random

device = config.device

random.seed(config.seed_val)
np.random.seed(config.seed_val)
torch.manual_seed(config.seed_val)
torch.cuda.manual_seed_all(config.seed_val)

df.head()

from sklearn.model_selection import train_test_split

train_df_, val_df = train_test_split(df,
                                    test_size=0.10,
                                    random_state=config.random_state,
                            stratify=df.label.values)

train_df_.head()

train_df, test_df = train_test_split(train_df_,
                                    test_size=0.10,
                                    random_state=42,
                            stratify=train_df_.label.values)

print(len(train_df['label'].unique()))
print(train_df.shape)

print(len(val_df['label'].unique()))
print(val_df.shape)

print(len(test_df['label'].unique()))
print(test_df.shape)

tokenizer = BertTokenizer.from_pretrained(config.pretrained_model,
                                          do_lower_case=config.do_lower_case)

encoded_data_train = tokenizer.batch_encode_plus(
    train_df.Review.values,
    add_special_tokens=config.add_special_tokens,
    return_attention_mask=config.return_attention_mask,
    pad_to_max_length=config.pad_to_max_length,
    max_length=config.seq_length,
    return_tensors=config.return_tensors
)
encoded_data_val = tokenizer.batch_encode_plus(
    val_df.Review.values,
    add_special_tokens=config.add_special_tokens,
    return_attention_mask=config.return_attention_mask,
    pad_to_max_length=config.pad_to_max_length,
    max_length=config.seq_length,
    return_tensors=config.return_tensors
)

input_ids_train = encoded_data_train['input_ids']
attention_masks_train = encoded_data_train['attention_mask']
labels_train = torch.tensor(train_df.label.values)

input_ids_val = encoded_data_val['input_ids']
attention_masks_val = encoded_data_val['attention_mask']
labels_val = torch.tensor(val_df.label.values)

dataset_train = TensorDataset(input_ids_train, attention_masks_train, labels_train)
dataset_val = TensorDataset(input_ids_val, attention_masks_val, labels_val)

model = BertForSequenceClassification.from_pretrained(config.pretrained_model,
                                                      num_labels=3,
                                                      output_attentions=False,
                                                      output_hidden_states=False)

from torch.utils.data import DataLoader, RandomSampler, SequentialSampler

dataloader_train = DataLoader(dataset_train,
                              sampler=RandomSampler(dataset_train),
                              batch_size=config.batch_size)

dataloader_validation = DataLoader(dataset_val,
                                   sampler=SequentialSampler(dataset_val),
                                   batch_size=config.batch_size)

from transformers import AdamW, get_linear_schedule_with_warmup

optimizer = AdamW(model.parameters(),
                  lr=config.lr,
                  eps=config.eps)


scheduler = get_linear_schedule_with_warmup(optimizer,
                                            num_warmup_steps=0,
                                            num_training_steps=len(dataloader_train)*config.epochs)

from sklearn.metrics import f1_score

def f1_score_func(preds, labels):
    preds_flat = np.argmax(preds, axis=1).flatten()
    labels_flat = labels.flatten()
    return f1_score(labels_flat, preds_flat, average='weighted')

def accuracy_per_class(preds, labels, label_dict):
    label_dict_inverse = {v: k for k, v in label_dict.items()}

    preds_flat = np.argmax(preds, axis=1).flatten()
    labels_flat = labels.flatten()

    for label in np.unique(labels_flat):
        y_preds = preds_flat[labels_flat==label]
        y_true = labels_flat[labels_flat==label]
        print(f'Class: {label_dict_inverse[label]}')
        print(f'Accuracy: {len(y_preds[y_preds==label])}/{len(y_true)}\n')

def evaluate(dataloader_val):

    model.eval()

    loss_val_total = 0
    predictions, true_vals = [], []

    for batch in dataloader_val:

        batch = tuple(b.to(config.device) for b in batch)

        inputs = {'input_ids':      batch[0],
                  'attention_mask': batch[1],
                  'labels':         batch[2],
                 }

        with torch.no_grad():
            outputs = model(**inputs)

        loss = outputs[0]
        logits = outputs[1]
        loss_val_total += loss.item()

        logits = logits.detach().cpu().numpy()
        label_ids = inputs['labels'].cpu().numpy()
        predictions.append(logits)
        true_vals.append(label_ids)

    # calculate avareage val loss
    loss_val_avg = loss_val_total/len(dataloader_val)

    predictions = np.concatenate(predictions, axis=0)
    true_vals = np.concatenate(true_vals, axis=0)

    return loss_val_avg, predictions, true_vals

config.device

model.to(config.device)

for epoch in tqdm(range(1, config.epochs+1)):

    model.train()

    loss_train_total = 0
    # allows you to see the progress of the training
    progress_bar = tqdm(dataloader_train, desc='Epoch {:1d}'.format(epoch), leave=False, disable=False)

    for batch in progress_bar:

        model.zero_grad()

        batch = tuple(b.to(config.device) for b in batch)

        inputs = {'input_ids':      batch[0],
                  'attention_mask': batch[1],
                  'labels':         batch[2],
                 }

        outputs = model(**inputs)

        loss = outputs[0]
        loss_train_total += loss.item()
        loss.backward()

        torch.nn.utils.clip_grad_norm_(model.parameters(), 1.0)

        optimizer.step()
        scheduler.step()
        progress_bar.set_postfix({'training_loss': '{:.3f}'.format(loss.item()/len(batch))})


    torch.save(model.state_dict(), f'_BERT_epoch_{epoch}.model')

    tqdm.write(f'\nEpoch {epoch}')

    loss_train_avg = loss_train_total/len(dataloader_train)
    tqdm.write(f'Training loss: {loss_train_avg}')

    val_loss, predictions, true_vals = evaluate(dataloader_validation)
    val_f1 = f1_score_func(predictions, true_vals)
    tqdm.write(f'Validation loss: {val_loss}')

    tqdm.write(f'F1 Score (Weighted): {val_f1}');
# save model params and other configs
with Path('params.json').open("w") as f:
      json.dump(params, f, ensure_ascii=False, indent=4)

model.load_state_dict(torch.load(f'./_BERT_epoch_3.model', map_location=torch.device('cpu')))

from sklearn.metrics import classification_report

preds_flat = np.argmax(predictions, axis=1).flatten()
print(classification_report(preds_flat, true_vals))

pred_final = []

for i, row in tqdm(val_df.iterrows(), total=val_df.shape[0]):
    predictions = []

    review = row["Review"]
    encoded_data_test_single = tokenizer.batch_encode_plus(
    [review],
    add_special_tokens=config.add_special_tokens,
    return_attention_mask=config.return_attention_mask,
    pad_to_max_length=config.pad_to_max_length,
    max_length=config.seq_length,
    return_tensors=config.return_tensors
    )
    input_ids_test = encoded_data_test_single['input_ids']
    attention_masks_test = encoded_data_test_single['attention_mask']


    inputs = {'input_ids':      input_ids_test.to(device),
              'attention_mask':attention_masks_test.to(device),
             }

    with torch.no_grad():
        outputs = model(**inputs)

    logits = outputs[0]
    logits = logits.detach().cpu().numpy()
    predictions.append(logits)
    predictions = np.concatenate(predictions, axis=0)
    pred_final.append(np.argmax(predictions, axis=1).flatten()[0])

val_df["pred"] = pred_final
#  Add control column for easier wrong and right predictions
control = val_df.pred.values == val_df.label.values
val_df["control"] = control
# filtering false predictions
val_df = val_df[val_df.control == False]



name2label = {"Negative":0,
              "Neutral":1,
             "Positive":2
             }
label2name = {v: k for k, v in name2label.items()}

val_df["pred_name"] = val_df.pred.apply(lambda x: label2name.get(x))
from sklearn.metrics import confusion_matrix

# We create a confusion matrix to better observe the classes that the model confuses.
pred_name_values = val_df.pred_name.values
label_values = val_df.label_name.values
confmat = confusion_matrix(label_values, pred_name_values, labels=list(name2label.keys()))

confmat

df_confusion_val = pd.crosstab(label_values, pred_name_values)
df_confusion_val

df_confusion_val.to_csv("val_df_confusion.csv")

test_df.head()

encoded_data_test = tokenizer.batch_encode_plus(
    test_df.Review.values,
    add_special_tokens=config.add_special_tokens,
    return_attention_mask=config.return_attention_mask,
    pad_to_max_length=config.pad_to_max_length,
    max_length=config.seq_length,
    return_tensors=config.return_tensors
)
input_ids_test = encoded_data_test['input_ids']
attention_masks_test = encoded_data_test['attention_mask']
labels_test = torch.tensor(test_df.label.values)

model = BertForSequenceClassification.from_pretrained(config.pretrained_model,
                                                      num_labels=3,
                                                      output_attentions=False,
                                                      output_hidden_states=False)

model.to(config.device)

model.load_state_dict(torch.load(f'./_BERT_epoch_3.model', map_location=torch.device('cpu')))

_, predictions_test, true_vals_test = evaluate(dataloader_validation)
# accuracy_per_class(predictions, true_vals, intent2label)

def predict_sentiment(text):
    # Prétraitement du texte
    encoded_text = tokenizer.encode_plus(
        text,
        add_special_tokens=config.add_special_tokens,
        return_attention_mask=config.return_attention_mask,
        pad_to_max_length=config.pad_to_max_length,
        max_length=config.seq_length,
        return_tensors=config.return_tensors
    )

    # Convertir les entrées en tenseurs et les déplacer vers le bon appareil
    input_ids = encoded_text['input_ids'].to(config.device)
    attention_mask = encoded_text['attention_mask'].to(config.device)

    # Mettre le modèle en mode d'évaluation et obtenir les prédictions
    model.eval()
    with torch.no_grad():
        outputs = model(input_ids, attention_mask)

    # Obtenir la prédiction du modèle
    logits = outputs[0]
    logits = logits.detach().cpu().numpy()

    # Extraire la classe avec la probabilité la plus élevée
    pred = np.argmax(logits, axis=1).flatten()[0]

    # Convertir le label numérique en son nom correspondant
    pred_name = label2name.get(pred)

    return pred_name

text = "Your text here"
prediction = predict_sentiment(text)
print(f"The sentiment of the text is: {prediction}")

from sklearn.metrics import classification_report

preds_flat_test = np.argmax(predictions_test, axis=1).flatten()
print(classification_report(preds_flat_test, true_vals_test))

pred_final = []

for i, row in tqdm(test_df.iterrows(), total=test_df.shape[0]):
    predictions = []

    review = row["Review"]
    encoded_data_test_single = tokenizer.batch_encode_plus(
    [review],
    add_special_tokens=config.add_special_tokens,
    return_attention_mask=config.return_attention_mask,
    pad_to_max_length=config.pad_to_max_length,
    max_length=config.seq_length,
    return_tensors=config.return_tensors
    )
    input_ids_test = encoded_data_test_single['input_ids']
    attention_masks_test = encoded_data_test_single['attention_mask']

    inputs = {'input_ids':      input_ids_test.to(device),
              'attention_mask':attention_masks_test.to(device),
             }

    with torch.no_grad():
        outputs = model(**inputs)

    logits = outputs[0]
    logits = logits.detach().cpu().numpy()
    predictions.append(logits)
    predictions = np.concatenate(predictions, axis=0)
    pred_final.append(np.argmax(predictions, axis=1).flatten()[0])

# add pred into test
test_df["pred"] = pred_final
#  Add control column for easier wrong and right predictions
control = test_df.pred.values == test_df.label.values
test_df["control"] = control
# filtering false predictions
test_df = test_df[test_df.control == False]
test_df["pred_name"] = test_df.pred.apply(lambda x: label2name.get(x))

from sklearn.metrics import confusion_matrix

# We create a confusion matrix to better observe the classes that the model confuses.
pred_name_values = test_df.pred_name.values
label_values = test_df.label_name.values
confmat = confusion_matrix(label_values, pred_name_values, labels=list(name2label.keys()))
confmat

df_confusion_test = pd.crosstab(label_values, pred_name_values)
df_confusion_test

import matplotlib.pyplot as plt
import seaborn as sns

# Supposons que 'confmat' est votre matrice de confusion

fig, ax = plt.subplots(figsize=(10,10))  # changez la taille selon vos besoins
sns.heatmap(confmat, annot=True, fmt='d',
            xticklabels=name2label.keys(), yticklabels=name2label.keys())
plt.ylabel('Vraies valeurs')
plt.xlabel('Prédictions')
plt.show()