Sparseness vs estimating conditional probabilities : some asymptotic results


Autoria(s): Bartlett, Peter L.; Tewari, Ambuj
Data(s)

01/04/2007

Resumo

One of the nice properties of kernel classifiers such as SVMs is that they often produce sparse solutions. However, the decision functions of these classifiers cannot always be used to estimate the conditional probability of the class label. We investigate the relationship between these two properties and show that these are intimately related: sparseness does not occur when the conditional probabilities can be unambiguously estimated. We consider a family of convex loss functions and derive sharp asymptotic results for the fraction of data that becomes support vectors. This enables us to characterize the exact trade-off between sparseness and the ability to estimate conditional probabilities for these loss functions.

Identificador

http://eprints.qut.edu.au/43999/

Publicador

Journal of Machine Learning Research

Relação

http://www.jmlr.org/papers/volume8/bartlett07a/bartlett07a.pdf

Bartlett, Peter L. & Tewari, Ambuj (2007) Sparseness vs estimating conditional probabilities : some asymptotic results. Journal of Machine Learning Research, 8(April), pp. 775-790.

Direitos

Copyright 2007 Journal of Machine Learning Research

Fonte

Faculty of Science and Technology; Mathematical Sciences

Palavras-Chave #080100 ARTIFICIAL INTELLIGENCE AND IMAGE PROCESSING #170200 COGNITIVE SCIENCE #kernel methods #estimating conditional probabilities #sparseness #support vector machines #OAVJ
Tipo

Journal Article