We present sharp bounds on the risk of the empirical minimization algorithm under mild assumptions on the class. We introduce the notion of isomorphic coordinate projections and show that this leads to a sharper error bound than the best previously known. The quantity which governs this bound on the empirical minimizer is the largest fixed point of the function ζn(r) = Esup{|Ef - Enf |f ε F, Ef = r}. We prove that this is the best estimate one can obtain using "structural results", and that it is possible to estimate the error rate from data. We then prove that the bound on the empirical minimization algorithm can be improved further by a direct analysis, and that the correct error rate is the maximizer of ζn(r) - r, where ζn(r) = Esup{Ef -...
Consider supervised learning from i.i.d. samples $\{{\boldsymbol x}_i,y_i\}_{i\le n}$ where ${\bolds...
© 2017 Neural information processing systems foundation. All rights reserved. Empirical risk minimiz...
We study sample-based estimates of the expectation of the function produced by the empirical minimiz...
We present sharp bounds on the risk of the empirical minimization algorithm under mild assumptions o...
We present an argument based on the multidimensional and the uniform central limit theorems, proving...
We investigate the behavior of the empirical minimization algorithm using various methods. We first ...
We study properties of algorithms which minimize (or almost minimize) empirical error over a Donsker...
We study some stability properties of algorithms which minimize (or almost-minimize) empirical error...
In this correspondence, we present a simple argument that proves that under mild geometric assumptio...
Properties of estimators of a functional parameter in an inverse problem setup are studied. We focus...
We study sample-based estimates of the expectation of the function produced by the empirical minimiz...
We study some stability properties of algorithms which minimize (or almost-minimize) empirical error...
We study sample-based estimates of the expectation of the function produced by the empirical minimiz...
We study sample-based estimates of the expectation of the function produced by the empirical minimiz...
We study the performance of empirical risk minimization on the $p$-norm linear regression problem fo...
Consider supervised learning from i.i.d. samples $\{{\boldsymbol x}_i,y_i\}_{i\le n}$ where ${\bolds...
© 2017 Neural information processing systems foundation. All rights reserved. Empirical risk minimiz...
We study sample-based estimates of the expectation of the function produced by the empirical minimiz...
We present sharp bounds on the risk of the empirical minimization algorithm under mild assumptions o...
We present an argument based on the multidimensional and the uniform central limit theorems, proving...
We investigate the behavior of the empirical minimization algorithm using various methods. We first ...
We study properties of algorithms which minimize (or almost minimize) empirical error over a Donsker...
We study some stability properties of algorithms which minimize (or almost-minimize) empirical error...
In this correspondence, we present a simple argument that proves that under mild geometric assumptio...
Properties of estimators of a functional parameter in an inverse problem setup are studied. We focus...
We study sample-based estimates of the expectation of the function produced by the empirical minimiz...
We study some stability properties of algorithms which minimize (or almost-minimize) empirical error...
We study sample-based estimates of the expectation of the function produced by the empirical minimiz...
We study sample-based estimates of the expectation of the function produced by the empirical minimiz...
We study the performance of empirical risk minimization on the $p$-norm linear regression problem fo...
Consider supervised learning from i.i.d. samples $\{{\boldsymbol x}_i,y_i\}_{i\le n}$ where ${\bolds...
© 2017 Neural information processing systems foundation. All rights reserved. Empirical risk minimiz...
We study sample-based estimates of the expectation of the function produced by the empirical minimiz...