rsher60 / Sentiment-Analysis-by-combining-Machine-Learning-and-Lexicon-Based-methods
This project is on twitter sentimental analysis by combining lexicon based and machine learning approaches. A supervised lexicon-based approach for extracting sentiments from tweets was implemented. Various supervised machine learning approaches were tested using scikit-learn libraries in python and implemented Decision Trees and Naive Bayes tec…
☆15Updated 6 years ago
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