We provide an exact nonasymptotic lower bound on the minimax expected excess risk (EER) in the agnostic probably-approximately-correct (PAC) machine learning classification model and identify minimax learning algorithms as certain maximally symmetric and minimally randomized “voting” procedures. Based on this result, an exact asymptotic lower bound on the minimax EER is provided. This bound is of the simple form c∞/ √ ν as ν→∞, where c∞ = 0.16997 . . . is a universal constant, ν = m/d, m is the size of the training sample and d is the Vapnik–Chervonenkis dimension of the hypothesis class. It is shown that the differences between these asymptotic and nonasymptotic bounds, as well as the differences between these two bounds and the maximum EE...
We study upper and lower bounds on the sample-complexity of learning near-optimal behaviour in finit...
We study upper and lower bounds on the sample-complexity of learning near-optimal behaviour in finit...
We show how to a derive exact distribution-free nonparametric results for minimax risk when underlyi...
Minimax lower bounds for concept learning state, for example, that for each sample size $n$ and lear...
We present an argument based on the multidimensional and the uniform central limit theorems, proving...
Two main concepts studied in machine learning theory are generalization gap (difference between trai...
The Minimax Probability Machine Classification (MPMC) framework [Lanckriet et al., 2002] builds cla...
We study the interaction between input distributions, learning algorithms and finite sample sizes in...
We develop asymptotic theory for nonparametric estimators of the autoregression function. To deal wi...
In this work, we construct generalization bounds to understand existing learning algorithms and prop...
We develop minimax optimal risk bounds for the general learning task consisting in predicting as wel...
International audienceMinimising upper bounds on the population risk or the generalisation gap has b...
We study the interaction between input distributions, learning algo-rithms, and finite sample sizes ...
Assume we are trying to learn a concept class C of VC dimension d with respect to an arbitrary distr...
We present a novel notion of complexity that interpolates between and generalizes some classic exist...
We study upper and lower bounds on the sample-complexity of learning near-optimal behaviour in finit...
We study upper and lower bounds on the sample-complexity of learning near-optimal behaviour in finit...
We show how to a derive exact distribution-free nonparametric results for minimax risk when underlyi...
Minimax lower bounds for concept learning state, for example, that for each sample size $n$ and lear...
We present an argument based on the multidimensional and the uniform central limit theorems, proving...
Two main concepts studied in machine learning theory are generalization gap (difference between trai...
The Minimax Probability Machine Classification (MPMC) framework [Lanckriet et al., 2002] builds cla...
We study the interaction between input distributions, learning algorithms and finite sample sizes in...
We develop asymptotic theory for nonparametric estimators of the autoregression function. To deal wi...
In this work, we construct generalization bounds to understand existing learning algorithms and prop...
We develop minimax optimal risk bounds for the general learning task consisting in predicting as wel...
International audienceMinimising upper bounds on the population risk or the generalisation gap has b...
We study the interaction between input distributions, learning algo-rithms, and finite sample sizes ...
Assume we are trying to learn a concept class C of VC dimension d with respect to an arbitrary distr...
We present a novel notion of complexity that interpolates between and generalizes some classic exist...
We study upper and lower bounds on the sample-complexity of learning near-optimal behaviour in finit...
We study upper and lower bounds on the sample-complexity of learning near-optimal behaviour in finit...
We show how to a derive exact distribution-free nonparametric results for minimax risk when underlyi...