Cao Ruizhi, Guan Chun, Gan Zhongxue, Leng Siyang
Institute of AI and Robotics, Academy for Engineering and Technology, Fudan University, Shanghai 200433, China.
Research Institute of Intelligent Complex Systems, Fudan University, Shanghai 200433, China.
Entropy (Basel). 2023 Mar 16;25(3):515. doi: 10.3390/e25030515.
Physically implemented neural networks are subject to external perturbations and internal variations. Existing works focus on the adversarial attacks but seldom consider attack on the network structure and the corresponding recovery method. Inspired by the biological neural compensation mechanism and the neuromodulation technique in clinical practice, we propose a novel framework of reviving attacked reservoir computers, consisting of several strategies direct at different types of attacks on structure by adjusting only a minor fraction of edges in the reservoir. Numerical experiments demonstrate the efficacy and broad applicability of the framework and reveal inspiring insights into the mechanisms. This work provides a vehicle to improve the robustness of reservoir computers and can be generalized to broader types of neural networks.
物理实现的神经网络容易受到外部干扰和内部变化的影响。现有工作主要集中在对抗攻击上,但很少考虑对网络结构的攻击以及相应的恢复方法。受生物神经补偿机制和临床实践中的神经调节技术启发,我们提出了一种新颖的框架来恢复受攻击的回声状态网络,该框架由几种策略组成,通过仅调整回声状态网络中一小部分边来针对不同类型的结构攻击。数值实验证明了该框架的有效性和广泛适用性,并揭示了关于其机制的启发性见解。这项工作为提高回声状态网络的鲁棒性提供了一种手段,并且可以推广到更广泛类型的神经网络。