Distribution Generalization
Distribution generalization in machine learning focuses on developing models that maintain high performance when encountering data significantly different from their training data. Current research emphasizes techniques like invariant learning, multicalibration, and ensemble methods, often applied within transformer, graph neural network, and other architectures, to improve robustness against various distribution shifts (covariate, label, concept shifts). Successfully addressing this challenge is crucial for deploying reliable machine learning systems in real-world applications, where data distributions are inherently complex and dynamic, impacting fields such as autonomous driving, medical diagnosis, and scientific discovery.
Papers
Yesterday's News: Benchmarking Multi-Dimensional Out-of-Distribution Generalisation of Misinformation Detection Models
Ivo Verhoeven, Pushkar Mishra, Ekaterina Shutova
The Best of Both Worlds: On the Dilemma of Out-of-distribution Detection
Qingyang Zhang, Qiuxuan Feng, Joey Tianyi Zhou, Yatao Bian, Qinghua Hu, Changqing Zhang