English

Large-Scale Training Data Attribution for Music Generative Models via Unlearning

Sound 2025-10-08 v2 Audio and Speech Processing

Abstract

This paper explores the use of unlearning methods for training data attribution (TDA) in music generative models trained on large-scale datasets. TDA aims to identify which specific training data points contributed the most to the generation of a particular output from a specific model. This is crucial in the context of AI-generated music, where proper recognition and credit for original artists are generally overlooked. By enabling white-box attribution, our work supports a fairer system for acknowledging artistic contributions and addresses pressing concerns related to AI ethics and copyright. We apply unlearning-based attribution to a text-to-music diffusion model trained on a large-scale dataset and investigate its feasibility and behavior in this setting. To validate the method, we perform a grid search over different hyperparameter configurations and quantitatively evaluate the consistency of the unlearning approach. We then compare attribution patterns from unlearning with non-counterfactual approaches. Our findings suggest that unlearning-based approaches can be effectively adapted to music generative models, introducing large-scale TDA to this domain and paving the way for more ethical and accountable AI systems for music creation.

Keywords

Cite

@article{arxiv.2506.18312,
  title  = {Large-Scale Training Data Attribution for Music Generative Models via Unlearning},
  author = {Woosung Choi and Junghyun Koo and Kin Wai Cheuk and Joan Serrà and Marco A. Martínez-Ramírez and Yukara Ikemiya and Naoki Murata and Yuhta Takida and Wei-Hsiang Liao and Yuki Mitsufuji},
  journal= {arXiv preprint arXiv:2506.18312},
  year   = {2025}
}

Comments

accepted at NeurIPS 2025 Creative AI Track

R2 v1 2026-07-01T03:28:52.559Z