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Language Models for Music Medicine Generation

Authors :
Nikolakakis, Emmanouil
Ching, Joann
Karystinaios, Emmanouil
Sipin, Gabrielle
Widmer, Gerhard
Marinescu, Razvan
Publication Year :
2024

Abstract

Music therapy has been shown in recent years to provide multiple health benefits related to emotional wellness. In turn, maintaining a healthy emotional state has proven to be effective for patients undergoing treatment, such as Parkinson's patients or patients suffering from stress and anxiety. We propose fine-tuning MusicGen, a music-generating transformer model, to create short musical clips that assist patients in transitioning from negative to desired emotional states. Using low-rank decomposition fine-tuning on the MTG-Jamendo Dataset with emotion tags, we generate 30-second clips that adhere to the iso principle, guiding patients through intermediate states in the valence-arousal circumplex. The generated music is evaluated using a music emotion recognition model to ensure alignment with intended emotions. By concatenating these clips, we produce a 15-minute "music medicine" resembling a music therapy session. Our approach is the first model to leverage Language Models to generate music medicine. Ultimately, the output is intended to be used as a temporary relief between music therapy sessions with a board-certified therapist.<br />Comment: Late-Breaking / Demo Session Extended Abstract, ISMIR 2024 Conference

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2411.09080
Document Type :
Working Paper