TY - JOUR
T1 - Robust DCNN
T2 - The impact of approximate multipliers in defending against adversarial attacks
AU - Askarizadeh, Mohammad Javad
AU - Castro-Godínez, Jorge
AU - Farahmand, Ebrahim
AU - Mahani, Ali
AU - Cabrera-Quirós, Laura
AU - Salazar-García, Carlos
N1 - Publisher Copyright:
© 2025 Elsevier B.V. All rights are reserved, including those for text and data mining, AI training, and similar technologies.
PY - 2026/3
Y1 - 2026/3
N2 - Deep Convolutional Neural Networks (DCNNs) excel in various machine learning tasks across critical domains like healthcare, finance, and autonomous transportation. However, they face significant challenges in computational cost and vulnerability to adversarial attacks in sensitive applications. While approximate computation methods have been proposed to enhance DCNN robustness, existing approaches typically cannot maintain resistance against all attack types without compromising accuracy on unperturbed inputs. This study introduces a modified AdaPT framework that optimizes both accuracy and robustness by quantizing parameters to 8 bits and systematically evaluating the model under adversarial conditions. We employ the NSGA-II multi-objective optimization algorithm to select appropriate approximate multipliers for each network layer and determine optimal approximation extents. Unlike previous methods that prioritize either robustness or accuracy, our approach achieves a balanced trade-off between these crucial metrics. Experimental results with ResNet-50 demonstrate that identifying the optimal Pareto front of approximate multiplier combinations yields simultaneous improvements of 31 % in accuracy and 30 % in robustness at a perturbation budget of 0.15 compared to the accurate model.
AB - Deep Convolutional Neural Networks (DCNNs) excel in various machine learning tasks across critical domains like healthcare, finance, and autonomous transportation. However, they face significant challenges in computational cost and vulnerability to adversarial attacks in sensitive applications. While approximate computation methods have been proposed to enhance DCNN robustness, existing approaches typically cannot maintain resistance against all attack types without compromising accuracy on unperturbed inputs. This study introduces a modified AdaPT framework that optimizes both accuracy and robustness by quantizing parameters to 8 bits and systematically evaluating the model under adversarial conditions. We employ the NSGA-II multi-objective optimization algorithm to select appropriate approximate multipliers for each network layer and determine optimal approximation extents. Unlike previous methods that prioritize either robustness or accuracy, our approach achieves a balanced trade-off between these crucial metrics. Experimental results with ResNet-50 demonstrate that identifying the optimal Pareto front of approximate multiplier combinations yields simultaneous improvements of 31 % in accuracy and 30 % in robustness at a perturbation budget of 0.15 compared to the accurate model.
KW - Approximate computing
KW - Deep neural networks
KW - Edge computing
KW - Hardware acceleration
KW - Multi-layer neural network
KW - Neural network hardware
UR - https://www.scopus.com/pages/publications/105030021874
U2 - 10.1016/j.future.2025.108220
DO - 10.1016/j.future.2025.108220
M3 - Artículo
SN - 0167-739X
VL - 176
JO - Future Generation Computer Systems
JF - Future Generation Computer Systems
M1 - 108220
ER -