In this paper, we study a two-category classification problem. We indicate the categories by labels Y=1 and Y=-1. We observe a covariate, or feature, X ¿ X ¿ Rd. Consider a collection {ha} of classifiers indexed by a finite-dimensional parameter a, and the classifier ha* that minimizes the prediction error over this class. The parameter a* is estimated by the empirical risk minimizer ân over the class, where the empirical risk is calculated on a training sample of size n. We apply the Kim Pollard Theorem to show that under certain differentiability assumptions, ân converges to a* with rate n-1/3, and also present the asymptotic distribution of the renormalized estimator.For example, let V0 denote the set of x on which, given X=x, the label ...
We study some stability properties of algorithms which minimize (or almost-minimize) empirical error...
36 pagesIt has been recently shown that, under the margin (or low noise) assumption, there exist cla...
Asymptotic properties of two-group supervised classi cation rules designed for problems with much m...
In this paper, we study a two-category classification problem. We indicate the categories by labels ...
In this paper, we study a two-category classification problem. We indicate the categories by labels ...
In this paper, we study a two-category classification problem. We indicate the categories by labels ...
In this paper, we study a two-category classification problem. We indicate the categories by labels ...
In this paper, we study a two-category classification problem. We indicate the categories by labels ...
In this paper, we study a two-category classification problem. We indicate the categories by labels ...
In this paper, we study a two-category classification problem. We indicate the cate-gories by labels...
Consider supervised learning from i.i.d. samples $\{{\boldsymbol x}_i,y_i\}_{i\le n}$ where ${\bolds...
We develop minimax optimal risk bounds for the general learning task consisting in predicting as wel...
The effect of errors in variables in empirical minimization is investigated. Given a loss $l$ and a ...
Consider the multiclassification (discrimination) problem with known prior probabilities and a multi...
Consider the multiclassification (discrimination) problem with known prior probabilities and a multi...
We study some stability properties of algorithms which minimize (or almost-minimize) empirical error...
36 pagesIt has been recently shown that, under the margin (or low noise) assumption, there exist cla...
Asymptotic properties of two-group supervised classi cation rules designed for problems with much m...
In this paper, we study a two-category classification problem. We indicate the categories by labels ...
In this paper, we study a two-category classification problem. We indicate the categories by labels ...
In this paper, we study a two-category classification problem. We indicate the categories by labels ...
In this paper, we study a two-category classification problem. We indicate the categories by labels ...
In this paper, we study a two-category classification problem. We indicate the categories by labels ...
In this paper, we study a two-category classification problem. We indicate the categories by labels ...
In this paper, we study a two-category classification problem. We indicate the cate-gories by labels...
Consider supervised learning from i.i.d. samples $\{{\boldsymbol x}_i,y_i\}_{i\le n}$ where ${\bolds...
We develop minimax optimal risk bounds for the general learning task consisting in predicting as wel...
The effect of errors in variables in empirical minimization is investigated. Given a loss $l$ and a ...
Consider the multiclassification (discrimination) problem with known prior probabilities and a multi...
Consider the multiclassification (discrimination) problem with known prior probabilities and a multi...
We study some stability properties of algorithms which minimize (or almost-minimize) empirical error...
36 pagesIt has been recently shown that, under the margin (or low noise) assumption, there exist cla...
Asymptotic properties of two-group supervised classi cation rules designed for problems with much m...