Tiny Refinement Elicit Resilience
"Tiny Refinements Elicit Resilience" explores how seemingly small modifications to systems and models can dramatically improve their ability to withstand disruptions and unexpected inputs. Current research focuses on enhancing resilience in diverse areas, including robotics (using reinforcement learning and multi-modal approaches), AI multi-agent systems (developing robust cooperative strategies and metrics), and deep learning models (improving robustness against adversarial attacks and noisy data through techniques like adversarial training and feature regularization). This research is crucial for building reliable and trustworthy AI systems across various applications, from autonomous navigation to critical infrastructure management, by addressing vulnerabilities and improving performance in unpredictable environments.
Papers
Deep Generative Modeling Reshapes Compression and Transmission: From Efficiency to Resiliency
Jincheng Dai, Xiaoqi Qin, Sixian Wang, Lexi Xu, Kai Niu, Ping Zhang
ProAct: Progressive Training for Hybrid Clipped Activation Function to Enhance Resilience of DNNs
Seyedhamidreza Mousavi, Mohammad Hasan Ahmadilivani, Jaan Raik, Maksim Jenihhin, Masoud Daneshtalab