Local Rademacher complexities


Autoria(s): Bartlett, Peter L.; Bousquet, Olivier; Mendelson, Shahar
Data(s)

2005

Resumo

We propose new bounds on the error of learning algorithms in terms of a data-dependent notion of complexity. The estimates we establish give optimal rates and are based on a local and empirical version of Rademacher averages, in the sense that the Rademacher averages are computed from the data, on a subset of functions with small empirical error. We present some applications to classification and prediction with convex function classes, and with kernel classes in particular.

Identificador

http://eprints.qut.edu.au/43986/

Publicador

Institute of Mathematical Statistics

Relação

DOI:10.1214/009053605000000282

Bartlett, Peter L., Bousquet, Olivier, & Mendelson, Shahar (2005) Local Rademacher complexities. The Annals of Statistics, 33(4), pp. 1497-1537.

Direitos

Copyright 2005 Institute of Mathematical Statistics

Fonte

Faculty of Science and Technology; Mathematical Sciences

Palavras-Chave #010400 STATISTICS #140300 ECONOMETRICS #Error bounds #concentration inequalities #data-dependent complexity #Rademacher averages
Tipo

Journal Article