论文标题
形态-2.0:逃避弹性移动目标防御,由分布外检测提供支持
Morphence-2.0: Evasion-Resilient Moving Target Defense Powered by Out-of-Distribution Detection
论文作者
论文摘要
逃避机器学习模型的攻击通常通过迭代探测固定目标模型成功,从而曾经成功的攻击将反复成功。应对这种威胁的一种有希望的方法是使模型成为对抗输入的行动目标。为此,我们介绍了Morphence-2.0,这是一个由分布外(OOD)检测提供动力的可扩展移动目标防御(MTD),以防止对抗性例子。通过定期移动模型的决策功能,Morphence-2.0使重复或相关攻击成功的挑战变得极大。 Morphence-2.0以基本模型生成的模型池以引入足够随机性的方式对预测查询进行响应。通过OOD检测,Morphence-2.0配备了调度方法,该方法将对抗性示例分配给了强大的决策功能,并将良性样本分配给了未防御的准确模型。为了确保重复或相关的攻击失败,已部署的模型池在达到查询预算后自动到期,并且模型池被提前生成的新模型池无缝替代。我们在两个基准图像分类数据集(MNIST和CIFAR10)上评估了Morphence-2.0,可用于4个参考攻击(3个白色框和1个Black-Box)。 Morphence-2.0始终优于先前的防御能力,同时保持清洁数据的准确性和降低攻击可传递性。我们还表明,当通过OOD检测支持时,Morphence-2.0能够精确地对模型的决策功能进行基于输入的运动,从而导致对对抗和良性查询的预测准确性更高。
Evasion attacks against machine learning models often succeed via iterative probing of a fixed target model, whereby an attack that succeeds once will succeed repeatedly. One promising approach to counter this threat is making a model a moving target against adversarial inputs. To this end, we introduce Morphence-2.0, a scalable moving target defense (MTD) powered by out-of-distribution (OOD) detection to defend against adversarial examples. By regularly moving the decision function of a model, Morphence-2.0 makes it significantly challenging for repeated or correlated attacks to succeed. Morphence-2.0 deploys a pool of models generated from a base model in a manner that introduces sufficient randomness when it responds to prediction queries. Via OOD detection, Morphence-2.0 is equipped with a scheduling approach that assigns adversarial examples to robust decision functions and benign samples to an undefended accurate models. To ensure repeated or correlated attacks fail, the deployed pool of models automatically expires after a query budget is reached and the model pool is seamlessly replaced by a new model pool generated in advance. We evaluate Morphence-2.0 on two benchmark image classification datasets (MNIST and CIFAR10) against 4 reference attacks (3 white-box and 1 black-box). Morphence-2.0 consistently outperforms prior defenses while preserving accuracy on clean data and reducing attack transferability. We also show that, when powered by OOD detection, Morphence-2.0 is able to precisely make an input-based movement of the model's decision function that leads to higher prediction accuracy on both adversarial and benign queries.