Optimal Rates for Vector-Valued Spectral Regularization Learning Algorithms

Neural Information Processing Systems 

We study theoretical properties of a broad class of regularized algorithms with vector-valued output. These spectral algorithms include kernel ridge regression, kernel principal component regression and various implementations of gradient descent.