: Traditional RAR does not differentiate between points if they all have "large" residuals, which can lead to less optimal point selection compared to more modern active-learning-based ranking methods. arXiv:2112.13988v1 [math.NA] 28 Dec 2021
: It significantly improves the speed at which a model converges to a solution. 13988 rar
Residual-based Adaptive Refinement is a strategy used to improve the accuracy and efficiency of by intelligently selecting training data points. : Traditional RAR does not differentiate between points
: While adaptive sampling approaches often rank and select points based on residual errors, RAR specifically chooses the "top k" largest residual points without necessarily differentiating between them further. : While adaptive sampling approaches often rank and
: It is generally more memory-efficient than strategies that constantly add new points to the dataset. Weaknesses :
: The method identifies "large residual error points"—areas where the model's current predictions deviate most from the physical laws it is trying to learn. It then adds more training points in those specific regions to refine the model's accuracy. Comparison to Other Methods :