Sharpness Aware Minimization
Sharpness-Aware Minimization (SAM) is an optimization technique aiming to improve the generalization ability of machine learning models by finding "flatter" minima in the loss landscape, reducing overfitting and enhancing robustness. Current research focuses on refining SAM's algorithm, including adaptive radius selection, bilateral sharpness estimation, and integrating it with other techniques like federated learning and uncertainty quantification, often applied to models such as transformers and convolutional neural networks. This approach holds significant promise for improving the performance and reliability of machine learning models across diverse applications, particularly in areas like medical image analysis and time series forecasting where generalization is crucial.
Papers
Locally Estimated Global Perturbations are Better than Local Perturbations for Federated Sharpness-aware Minimization
Ziqing Fan, Shengchao Hu, Jiangchao Yao, Gang Niu, Ya Zhang, Masashi Sugiyama, Yanfeng Wang
Domain-Inspired Sharpness-Aware Minimization Under Domain Shifts
Ruipeng Zhang, Ziqing Fan, Jiangchao Yao, Ya Zhang, Yanfeng Wang