Sentiment Analysis with an Recurrent Neural Networks (RNN) Last Updated : 27 May, 2025 Summarize Comments Improve Suggest changes Share Like Article Like Report Recurrent Neural Networks (RNNs) are used in sequence tasks such as sentiment analysis due to their ability to capture context from sequential data. In this article we will be apply RNNs to analyze the sentiment of customer reviews from Swiggy food delivery platform. The goal is to classify reviews as positive or negative for providing insights into customer experiences.We will conduct a Sentiment Analysis using the TensorFlow framework: 1. Importing Libraries and DatasetHere we will be importing numpy, pandas, Regular Expression (RegEx), scikit learn and tenserflow. Python import pandas as pd import numpy as np import re from sklearn.model_selection import train_test_split from tensorflow.keras.preprocessing.text import Tokenizer from tensorflow.keras.preprocessing.sequence import pad_sequences from tensorflow.keras.models import Sequential from tensorflow.keras.layers import SimpleRNN, Dense, Embedding 2. Loading DatasetWe will be using swiggy dataset of customer reviews. You can download dataset from here. pd.read_csv() : Reads the CSV file into a Pandas DataFramedata.columns : Accesses the column names of the DataFrametolist() : Converts the column names from an Index object to a regular Python list Python data = pd.read_csv('swiggy.csv') print("Columns in the dataset:") print(data.columns.tolist()) Output:Columns in the dataset: ['ID', 'Area', 'City', 'Restaurant Price', 'Avg Rating', 'Total Rating', 'Food Item', 'Food Type', 'Delivery Time', 'Review']3. Text Cleaning and Sentiment LabelingWe will clean the review text, create a sentiment label based on ratings and remove any missing values.data["Review"] = data["Review"].str.lower() : Converts all text in the "Review" column to lowercasedata["Review"] = data["Review"].replace(r'[^a-z0-9\s]', '', regex=True) : Removes all characters except letters, numbers and spaces from the "Review" columndata['sentiment'] = data['Avg Rating'].apply(lambda x: 1 if x > 3.5 else 0) : Creates a new "sentiment" column with 1 for ratings above 3.5 and 0 otherwisedata = data.dropna() : Removes rows that contain any missing values Python data["Review"] = data["Review"].str.lower() data["Review"] = data["Review"].replace(r'[^a-z0-9\s]', '', regex=True) data['sentiment'] = data['Avg Rating'].apply(lambda x: 1 if x > 3.5 else 0) data = data.dropna() 4. Tokenization and PaddingWe will prepare the text data by tokenizing and padding it and extract the target sentiment labels. Tokenizer converts words into integer sequences and padding ensures all input sequences have the same length (max_length).max_features = 5000 : Sets the maximum number of words to keep in the tokenizermax_length = 200 : Defines the fixed length for each input sequence after paddingTokenizer(num_words=max_features) : Initializes the tokenizer to keep the top 5000 words onlytokenizer.fit_on_texts(data["Review"]) : Builds the word index based on the reviews in the datasettokenizer.texts_to_sequences(data["Review"]) : Converts each review into a sequence of word indexespad_sequences(..., maxlen=max_length) : Pads or truncates each sequence to the same length (200)y = data['sentiment'].values : Extracts the sentiment labels as a NumPy array for model training Python max_features = 5000 max_length = 200 tokenizer = Tokenizer(num_words=max_features) tokenizer.fit_on_texts(data["Review"]) X = pad_sequences(tokenizer.texts_to_sequences(data["Review"]), maxlen=max_length) y = data['sentiment'].values Note: These concepts are a not a part of RNN but are done to make model prediction better. You can refer to tokenization and padding for more details.5. Splitting the DataWe will split the data into training, validation and test sets while maintaining the class distribution.train_test_split(X, y, test_size=0.2, random_state=42, stratify=y) : Splits data into 80% training and 20% test sets, preserving sentiment class balancetrain_test_split(X_train, y_train, test_size=0.1, random_state=42, stratify=y_train) : Further splits training data into 90% training and 10% validation sets, keeping class distribution consistent Python X_train, X_test, y_train, y_test = train_test_split( X, y, test_size=0.2, random_state=42, stratify=y ) X_train, X_val, y_train, y_val = train_test_split( X_train, y_train, test_size=0.1, random_state=42, stratify=y_train ) 6. Building RNN ModelWe will build and compile a simple RNN model for binary sentiment classification.Sequential([...]) : Creates a sequential neural network modelEmbedding(input_dim=max_features, output_dim=16, input_length=max_length) : Maps input words to 16-dimensional vectorsSimpleRNN(64, activation='tanh', return_sequences=False) : Adds a recurrent layer with 64 units using tanh activationDense(1, activation='sigmoid') : Adds an output layer with one neuron using sigmoid activation for binary outputmodel.compile(loss='binary_crossentropy', optimizer='adam', metrics=['accuracy']) : Configures the model with binary crossentropy loss, Adam optimizer and accuracy metric Python model = Sequential([ Embedding(input_dim=max_features, output_dim=16, input_length=max_length), SimpleRNN(64, activation='tanh', return_sequences=False), Dense(1, activation='sigmoid') ]) model.compile( loss='binary_crossentropy', optimizer='adam', metrics=['accuracy'] ) 7. Training and Evaluating ModelWe will train the model on training data, validate it during training, then evaluate its performance on test data.model.fit(...) : Trains the model for 5 epochs with batch size 32, validating on the validation setmodel.evaluate(X_test, y_test, verbose=0) : Evaluates the trained model on test data without extra outputprint(f"Test accuracy: {score[1]:.2f}") : Prints the test accuracy rounded to two decimal places Python history = model.fit( X_train, y_train, epochs=5, batch_size=32, validation_data=(X_val, y_val), verbose=1 ) score = model.evaluate(X_test, y_test, verbose=0) print(f"Test accuracy: {score[1]:.2f}") Output: Training and Evaluating ModelOur model achieved a accuracy of 72% which is great for a RNN model. We can further fine tune it to achieve more accuracy. 8. Predicting SentimentWe will create a function to preprocess a single review, predict its sentiment and display the result.review_text.lower() : Converts the input review text to lowercasere.sub(r'[^a-z0-9\s]', '', text) : Removes all characters except letters, numbers and spacestokenizer.texts_to_sequences([text]) : Converts the cleaned review into a sequence of word indexespad_sequences(seq, maxlen=max_length) : Pads the sequence to the fixed lengthmodel.predict(padded)[0][0] : Predicts the sentiment probability for the reviewReturns "Positive" if prediction is 0.5 or above, otherwise "Negative", including the probability score Python def predict_sentiment(review_text): text = review_text.lower() text = re.sub(r'[^a-z0-9\s]', '', text) seq = tokenizer.texts_to_sequences([text]) padded = pad_sequences(seq, maxlen=max_length) prediction = model.predict(padded)[0][0] return f"{'Positive' if prediction >= 0.5 else 'Negative'} (Probability: {prediction:.2f})" sample_review = "The food was great." print(f"Review: {sample_review}") print(f"Sentiment: {predict_sentiment(sample_review)}") Output: Predicting SentimentIn summary the model processes textual reviews through RNN to predict sentiment from raw data. This helps in actionable insights by understanding customer sentiment.You can download the source code from here. Comment More infoAdvertise with us Next Article Text Generation using Recurrent Long Short Term Memory Network M mazumdarabhishek94 Follow Improve Article Tags : Python Neural Network Practice Tags : python Similar Reads Deep Learning Tutorial Deep Learning is a subset of Artificial Intelligence (AI) that helps machines to learn from large datasets using multi-layered neural networks. It automatically finds patterns and makes predictions and eliminates the need for manual feature extraction. Deep Learning tutorial covers the basics to adv 5 min read Deep Learning BasicsIntroduction to Deep LearningDeep Learning is transforming the way machines understand, learn and interact with complex data. Deep learning mimics neural networks of the human brain, it enables computers to autonomously uncover patterns and make informed decisions from vast amounts of unstructured data. 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