Distribution Data
Distribution data, encompassing both in-distribution (ID) and out-of-distribution (OOD) data, is a critical area of machine learning research focused on improving model robustness and reliability. Current research emphasizes developing methods for detecting and handling OOD data, including techniques that leverage graph theory, contrastive learning, and diffusion models, as well as adapting existing models through reweighting and fine-tuning strategies. This work is crucial for building safer and more dependable AI systems across various applications, from autonomous vehicles to medical image analysis, by mitigating the risks associated with unexpected or unseen data. A key challenge remains effectively handling imbalanced datasets and complex real-world distribution shifts.
Papers
Building One-class Detector for Anything: Open-vocabulary Zero-shot OOD Detection Using Text-image Models
Yunhao Ge, Jie Ren, Jiaping Zhao, Kaifeng Chen, Andrew Gallagher, Laurent Itti, Balaji Lakshminarayanan
SR-OOD: Out-of-Distribution Detection via Sample Repairing
Rui Sun, Andi Zhang, Haiming Zhang, Jinke Ren, Yao Zhu, Ruimao Zhang, Shuguang Cui, Zhen Li
Hybrid Energy Based Model in the Feature Space for Out-of-Distribution Detection
Marc Lafon, Elias Ramzi, Clément Rambour, Nicolas Thome