Second-order Learning Algorithm with Squared Penalty Term

Saito, Kazumi, Nakano, Ryohei

Neural Information Processing Systems 

This paper compares three penalty terms with respect to the efficiency of supervised learning, by using first-and second-order learning algorithms. Our experiments showed that for a reasonably adequate penalty factor, the combination of the squared penalty term and the second-order learning algorithm drastically improves the convergence performance more than 20 times over the other combinations, at the same time bringing about a better generalization performance.

Similar Docs  Excel Report  more

TitleSimilaritySource
None found