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This paper presents a practical application of EEG technology and machine learning for emotion recognition. The use of a readily available EEG headset (EMOTIV EPOC) and the Random Forest algorithm makes the approach accessible. The high accuracy for happiness (97.21%) is promising, although the performance for sadness and relaxation is lower (76%). The development of a real-time emotion prediction algorithm is a significant contribution, demonstrating the potential for practical applications.
Reference

The Random Forest model achieved 97.21% accuracy for happiness, 76% for relaxation, and 76% for sadness.