In this paper we bound the risk of the Gibbs and Bayes classifiers (GC and BC), when the prior is defined in terms of the data generating distribution, and the posterior is defined in terms of the observed one, as proposed by Catoni (2007). We deal with this problem from two different perspectives. From one side we briefly review and further develop the classical PAC-Bayes analysis by refining the current state-of-the-art risk bounds. From the other side we propose a novel approach, based on the concept of Algorithmic Stability, which we call Distribution Stability (DS), and develop some new risk bounds over the GC and BC based on the DS. Finally, we show that the data dependent posterior distribution associated to the data generating prior...
International audienceThe aim of this paper is to generalize the PAC-Bayesian theorems proved by Cat...
Risk bounds, which are also called generalisation bounds in the statistical learning literature, are...
International audienceWe exhibit a strong link between frequentist PAC-Bayesian risk bounds and the ...
In this paper we bound the risk of the Gibbs and Bayes classifiers (GC and BC), when the prior is de...
In this paper we bound the risk of the Gibbs and Bayes classifiers (GC and BC), when the prior is de...
In this paper we bound the risk of the Gibbs and Bayes classifiers (GC and BC), when the prior is de...
In this paper we further develop the idea that the PAC-Bayes prior can be defined based on the data-...
In this paper we further develop the idea that the PAC-Bayes prior can be defined based on the data-...
In this paper we further develop the idea that the PAC-Bayes prior can be defined based on the data-...
PAC-Bayes bounds have been proposed to get risk estimates based on a training sample. In this paper...
In this paper we further develop the idea that the PAC-Bayes prior can be defined based on the data-...
We address the problem of algorithmic fairness: ensuring that sensitive information does not unfairl...
L'ambition du présent mémoire est la présentation d'un ensemble de principes appelés la théorie PAC-...
We provide a PAC-Bayesian bound for the expected loss of convex combinations of classifiers under a ...
The common method to understand and improve classification rules is to prove bounds on the generaliz...
International audienceThe aim of this paper is to generalize the PAC-Bayesian theorems proved by Cat...
Risk bounds, which are also called generalisation bounds in the statistical learning literature, are...
International audienceWe exhibit a strong link between frequentist PAC-Bayesian risk bounds and the ...
In this paper we bound the risk of the Gibbs and Bayes classifiers (GC and BC), when the prior is de...
In this paper we bound the risk of the Gibbs and Bayes classifiers (GC and BC), when the prior is de...
In this paper we bound the risk of the Gibbs and Bayes classifiers (GC and BC), when the prior is de...
In this paper we further develop the idea that the PAC-Bayes prior can be defined based on the data-...
In this paper we further develop the idea that the PAC-Bayes prior can be defined based on the data-...
In this paper we further develop the idea that the PAC-Bayes prior can be defined based on the data-...
PAC-Bayes bounds have been proposed to get risk estimates based on a training sample. In this paper...
In this paper we further develop the idea that the PAC-Bayes prior can be defined based on the data-...
We address the problem of algorithmic fairness: ensuring that sensitive information does not unfairl...
L'ambition du présent mémoire est la présentation d'un ensemble de principes appelés la théorie PAC-...
We provide a PAC-Bayesian bound for the expected loss of convex combinations of classifiers under a ...
The common method to understand and improve classification rules is to prove bounds on the generaliz...
International audienceThe aim of this paper is to generalize the PAC-Bayesian theorems proved by Cat...
Risk bounds, which are also called generalisation bounds in the statistical learning literature, are...
International audienceWe exhibit a strong link between frequentist PAC-Bayesian risk bounds and the ...