--- license: mit language: - en metrics: - accuracy library_name: sklearn pipeline_tag: text-classification tags: - code --- # Sentiment Analysis Model ## Overview This repository contains a sentiment analysis model trained using scikit-learn for predicting sentiment from text inputs. The model leverages TF-IDF vectorization for text representation and a machine learning classifier for sentiment classification. ## Model Details - **Model Name:** Sentiment Analysis Model - **Framework:** scikit-learn - **Model Type:** TF-IDF Vectorization + Machine Learning Classifier - **Architecture:** Linear SVM Classifier - **Input:** Text - **Output:** Sentiment Label (Positive/Negative) - **Performance:** Achieves 93% accuracy on test dataset # Download the Vectorizer model first and load the model : # Usage : ```python from huggingface_hub import hf_hub_download import joblib from sklearn.preprocessing import LabelEncoder # Download and load the sentiment analysis model from Hugging Face Model Hub model = joblib.load(hf_hub_download("DineshKumar1329/Sentiment_Analysis", "sklearn_model.joblib")) # Load the TF-IDF vectorizer tfidf_vectorizer = joblib.load(hf_hub_download("DineshKumar1329/Sentiment_Analysis", "vectorizer_model.joblib")) def clean_text(text): return text.lower() def predict_sentiment(user_input): """Predicts sentiment for a given user input.""" cleaned_text = clean_text(user_input) input_matrix = tfidf_vectorizer.transform([cleaned_text]) prediction = model.predict(input_matrix)[0] if isinstance(model.classes_, LabelEncoder): prediction = model.classes_.inverse_transform([prediction])[0] return prediction # Get user input user_input = input("Enter a sentence: ") # Predict sentiment predicted_sentiment = predict_sentiment(user_input) # Output the prediction print(f"Predicted Sentiment: {predicted_sentiment}")