Corruption Level
Research on corruption levels focuses on improving the robustness of machine learning models against various data corruptions, impacting diverse applications from image recognition and natural language processing to financial crime detection. Current efforts concentrate on developing novel training methods (like multiplicative weight perturbations and compounded corruptions) and benchmark datasets (PoseBench, RoboDepth, Robo3D) to evaluate model resilience across different corruption types and severities. These advancements are crucial for enhancing the reliability and trustworthiness of AI systems in real-world scenarios where imperfect or manipulated data are common, ultimately improving the accuracy and safety of applications.
Papers
Slight Corruption in Pre-training Data Makes Better Diffusion Models
Hao Chen, Yujin Han, Diganta Misra, Xiang Li, Kai Hu, Difan Zou, Masashi Sugiyama, Jindong Wang, Bhiksha Raj
Exploring Diffusion Models' Corruption Stage in Few-Shot Fine-tuning and Mitigating with Bayesian Neural Networks
Xiaoyu Wu, Jiaru Zhang, Yang Hua, Bohan Lyu, Hao Wang, Tao Song, Haibing Guan