cs.AI updates on arXiv.org 10月28日 12:14
MIBP-Cert:数据鲁棒性认证新方法
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本文提出MIBP-Cert,一种基于混合整数双线性规划的认证方法,为现代AI系统数据鲁棒性提供可证明的保证。通过预测所有可能结果,该方法确保了模型在复杂威胁模型下的鲁棒性。

arXiv:2412.10186v2 Announce Type: replace-cross Abstract: Data errors, corruptions, and poisoning attacks during training pose a major threat to the reliability of modern AI systems. While extensive effort has gone into empirical mitigations, the evolving nature of attacks and the complexity of data require a more principled, provable approach to robustly learn on such data - and to understand how perturbations influence the final model. Hence, we introduce MIBP-Cert, a novel certification method based on mixed-integer bilinear programming (MIBP) that computes sound, deterministic bounds to provide provable robustness even under complex threat models. By computing the set of parameters reachable through perturbed or manipulated data, we can predict all possible outcomes and guarantee robustness. To make solving this optimization problem tractable, we propose a novel relaxation scheme that bounds each training step without sacrificing soundness. We demonstrate the applicability of our approach to continuous and discrete data, as well as different threat models - including complex ones that were previously out of reach.

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数据鲁棒性 认证方法 混合整数双线性规划
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