Dynamic Reweighting
Dynamic reweighting is a technique used to adjust the influence of individual data points during model training, primarily aiming to improve model performance and address data imbalances or distribution shifts. Current research focuses on applying dynamic reweighting within various machine learning contexts, including imbalanced classification, time-series prediction, and continual learning, often employing meta-learning, optimal transport, or gradient-based methods to determine the weights. This approach holds significant value for enhancing model robustness, fairness, and generalization capabilities across diverse applications, from improving the efficiency of diffusion models to mitigating bias in AI systems.
Papers
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