On the Saturation Effects of Spectral Algorithms in Large Dimensions Haobo Zhang Department of Statistics and Data Science Department of Statistics and Data Science Tsinghua University

Neural Information Processing Systems 

The saturation effects, which originally refer to the fact that kernel ridge regression (KRR) fails to achieve the information-theoretical lower bound when the regression function is over-smooth, have been observed for almost 20 years and were rigorously proved recently for kernel ridge regression and some other spectral algorithms over a fixed dimensional domain. The main focus of this paper is to explore the saturation effects for a large class of spectral algorithms (including the KRR, gradient descent, etc.) in large dimensional settings where n d