Assessing the Effectiveness of Membership Inference on Generative Music
Kurtis Chow, Omar Samiullah, Vinesh Sridhar, and Hewen Zhang

TL;DR
This paper investigates whether membership inference attacks can effectively identify training data in generative music models, finding that music data shows resilience to such attacks, highlighting privacy and copyright concerns.
Contribution
First study to evaluate membership inference attacks on generative music models, providing initial insights into privacy vulnerabilities in this domain.
Findings
Music data is fairly resilient to known MIAs.
Membership inference attacks have limited success on generative music.
Implications for privacy and copyright in AI-generated music.
Abstract
Generative AI systems are quickly improving, now able to produce believable output in several modalities including images, text, and audio. However, this fast development has prompted increased scrutiny concerning user privacy and the use of copyrighted works in training. A recent attack on machine-learning models called membership inference lies at the crossroads of these two concerns. The attack is given as input a set of records and a trained model and seeks to identify which of those records may have been used to train the model. On one hand, this attack can be used to identify user data used to train a model, which may violate their privacy especially in sensitive applications such as models trained on medical data. On the other hand, this attack can be used by rights-holders as evidence that a company used their works without permission to train a model. Remarkably, it appears…
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Taxonomy
TopicsMusic and Audio Processing · Music Technology and Sound Studies · Adversarial Robustness in Machine Learning
