Abstract: In today's digital age, music plays a significant role in influencing and reflecting emotions. An emotion-based music recommendation system aims to enhance the user's listening experience by suggesting songs that resonate with their current emotional state. This project leverages advanced machine learning algorithms and natural language processing techniques to detect and classify emotions from user input, such as text, speech, or facial expressions. By analyzing emotional cues, the system can curate personalized playlists that align with the user's mood, whether they seek to amplify their current feelings or shift to a different emotional state. The recommendation engine is trained on a diverse dataset of music tracks labeled with emotional attributes, allowing it to accurately match songs to emotions.
| DOI: 10.17148/IARJSET.2024.11824