Honglei Guo, Jianmin Jiang, et al.
IJCNLP 2004
In this article, we study leave-one-out style cross-validation bounds for kernel methods. The essential element in our analysis is a bound on the parameter estimation stability for regularized kernel formulations. Using this result, we derive bounds on expected leave-one-out cross-validation errors, which lead to expected generalization bounds for various kernel algorithms. In addition, we also obtain variance bounds for leave-one-out errors. We apply our analysis to some classification and regression problems and compare them with previous results.
Honglei Guo, Jianmin Jiang, et al.
IJCNLP 2004
Ron Meir, Tong Zhang
NeurIPS 2002
Tong Zhang
NeurIPS 2003
Tong Zhang, Carlo Tomasi
IJCV