English

AffectMachine-Classical: A novel system for generating affective classical music

Sound 2023-04-12 v1 Artificial Intelligence Human-Computer Interaction Multimedia Audio and Speech Processing

Abstract

This work introduces a new music generation system, called AffectMachine-Classical, that is capable of generating affective Classic music in real-time. AffectMachine was designed to be incorporated into biofeedback systems (such as brain-computer-interfaces) to help users become aware of, and ultimately mediate, their own dynamic affective states. That is, this system was developed for music-based MedTech to support real-time emotion self-regulation in users. We provide an overview of the rule-based, probabilistic system architecture, describing the main aspects of the system and how they are novel. We then present the results of a listener study that was conducted to validate the ability of the system to reliably convey target emotions to listeners. The findings indicate that AffectMachine-Classical is very effective in communicating various levels of Arousal (R2=.96R^2 = .96) to listeners, and is also quite convincing in terms of Valence (R^2 = .90). Future work will embed AffectMachine-Classical into biofeedback systems, to leverage the efficacy of the affective music for emotional well-being in listeners.

Keywords

Cite

@article{arxiv.2304.04915,
  title  = {AffectMachine-Classical: A novel system for generating affective classical music},
  author = {Kat R. Agres and Adyasha Dash and Phoebe Chua},
  journal= {arXiv preprint arXiv:2304.04915},
  year   = {2023}
}

Comments

K. Agres and A. Dash share first authorship

R2 v1 2026-06-28T09:58:37.869Z