Generalization Performance of Some Learning Problems in Hilbert Functional Spaces
–Neural Information Processing Systems
We investigate the generalization performance of some learning problems inHilbert functional Spaces. We introduce a notion of convergence of the estimated functional predictor to the best underlying predictor, and obtain an estimate on the rate of the convergence. This estimate allows us to derive generalization bounds on some learning formulations.
Neural Information Processing Systems
Dec-31-2002