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 ...
36 pagesIt has been recently shown that, under the margin (or low noise) assumption, there exist cla...
We study some stability properties of algorithms which minimize (or almost-minimize) empirical error...
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...
36 pagesIt has been recently shown that, under the margin (or low noise) assumption, there exist cla...
We study some stability properties of algorithms which minimize (or almost-minimize) empirical error...
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...
36 pagesIt has been recently shown that, under the margin (or low noise) assumption, there exist cla...
We study some stability properties of algorithms which minimize (or almost-minimize) empirical error...
Asymptotic properties of two-group supervised classi cation rules designed for problems with much m...