We propose transferability from Large Geometric Vicinity (LGV), a new technique to increase the transferability of black-box adversarial attacks. LGV starts from a pretrained surrogate model and collects multiple weight sets from a few additional training epochs with a constant and high learning rate. LGV exploits two geometric properties that we relate to transferability. First, models that belong to a wider weight optimum are better surrogates. Second, we identify a subspace able to generate an effective surrogate ensemble among this wider optimum. Through extensive experiments, we show that LGV alone outperforms all (combinations of) four established test-time transformations by 1.8 to 59.9 percentage points. Our findings shed new light on the importance of the geometry of the weight space to explain the transferability of adversarial examples.
翻译:我们提议从大型几何相邻性(LGV)转移,这是增加黑盒对抗性攻击可转移性的一种新技术。LGV从预先训练的代孕模型开始,从几个不断和高学习率的额外培训时代收集多重重量组。LGV利用了我们与可转移性有关的两个几何特性。首先,属于更大重量最佳模型的模型是更好的代孕。第二,我们确定了一个能够在这种更广泛的最佳情况下产生有效代孕组合的子空间。通过广泛的实验,我们显示LGV单独比所有(组合)固定的四次试验时变形(组合)高出1.8至59.9个百分点。我们的调查结果揭示了重量空间几何学的重要性,以解释对抗性例子的可转移性。