Towards a Re-evaluation of Data Forging Attacks in Practice
November 08, 2024 Β· Declared Dead Β· π USENIX Security Symposium
"No code URL or promise found in abstract"
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Authors
Mohamed Suliman, Anisa Halimi, Swanand Kadhe, Nathalie Baracaldo, Douglas Leith
arXiv ID
2411.05658
Category
cs.CR: Cryptography & Security
Citations
0
Venue
USENIX Security Symposium
Last Checked
4 months ago
Abstract
Data forging attacks provide counterfactual proof that a model was trained on a given dataset, when in fact, it was trained on another. These attacks work by forging (replacing) mini-batches with ones containing distinct training examples that produce nearly identical gradients. Data forging appears to break any potential avenues for data governance, as adversarial model owners may forge their training set from a dataset that is not compliant to one that is. Given these serious implications on data auditing and compliance, we critically analyse data forging from both a practical and theoretical point of view, finding that a key practical limitation of current attack methods makes them easily detectable by a verifier; namely that they cannot produce sufficiently identical gradients. Theoretically, we analyse the question of whether two distinct mini-batches can produce the same gradient. Generally, we find that while there may exist an infinite number of distinct mini-batches with real-valued training examples and labels that produce the same gradient, finding those that are within the allowed domain e.g. pixel values between 0-255 and one hot labels is a non trivial task. Our results call for the reevaluation of the strength of existing attacks, and for additional research into successful data forging, given the serious consequences it may have on machine learning and privacy.
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