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Abstract
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.