Affiliation:
1. Rajiv Gandhi College of Engineering Research Technology, Chandrapur, India
2. Rajiv Gandhi college of Engineering Research and Technology, Chandrapur, India
Abstract
This study explores sentiment analysis of YouTube comments using machine learning algorithms including CNN, LSTM, SVM, Naive Bayes, and Random Forest. Implementing ensemble learning techniques, we evaluate their accuracies to understand public sentiment. The backend is built with Django, frontend with Vue.js, facilitating user-friendly visualization of results. Our findings highlight ensemble learning's effectiveness in enhancing sentiment analysis accuracy, offering insights into public sentiment on online platforms
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