LGCVMLApr 17, 2019

Defensive Quantization: When Efficiency Meets Robustness

arXiv:1904.08444v1217 citations
Originality Highly original
AI Analysis

This addresses security risks in deploying efficient deep learning models on hardware platforms, offering a novel method to enhance robustness without sacrificing efficiency.

The paper tackles the vulnerability of quantized neural networks to adversarial attacks by proposing Defensive Quantization (DQ), which controls the Lipschitz constant to prevent noise amplification, achieving superior robustness on CIFAR-10 and SVHN datasets while maintaining hardware efficiency.

Neural network quantization is becoming an industry standard to efficiently deploy deep learning models on hardware platforms, such as CPU, GPU, TPU, and FPGAs. However, we observe that the conventional quantization approaches are vulnerable to adversarial attacks. This paper aims to raise people's awareness about the security of the quantized models, and we designed a novel quantization methodology to jointly optimize the efficiency and robustness of deep learning models. We first conduct an empirical study to show that vanilla quantization suffers more from adversarial attacks. We observe that the inferior robustness comes from the error amplification effect, where the quantization operation further enlarges the distance caused by amplified noise. Then we propose a novel Defensive Quantization (DQ) method by controlling the Lipschitz constant of the network during quantization, such that the magnitude of the adversarial noise remains non-expansive during inference. Extensive experiments on CIFAR-10 and SVHN datasets demonstrate that our new quantization method can defend neural networks against adversarial examples, and even achieves superior robustness than their full-precision counterparts while maintaining the same hardware efficiency as vanilla quantization approaches. As a by-product, DQ can also improve the accuracy of quantized models without adversarial attack.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes