International audiencePAC-Bayesian bounds are known to be tight and informative when studying the generalization ability of randomized classifiers. However, they require a loose and costly derandomization step when applied to some families of deterministic models such as neural networks. As an alternative to this step, we introduce new PAC-Bayesian generalization bounds that have the originality to provide disintegrated bounds, i.e., they give guarantees over one single hypothesis instead of the usual averaged analysis. Our bounds are easily optimizable and can be used to design learning algorithms. We illustrate this behavior on neural networks, and we show a significant practical improvement over the state-of-the-art framework
International audiencePAC-Bayesian learning bounds are of the utmost interest to the learning commun...
International audienceWe propose a PAC-Bayesian theoretical study of the two-phase learning procedur...
International audiencePAC-Bayesian learning bounds are of the utmost interest to the learning commun...
International audiencePAC-Bayesian bounds are known to be tight and informative when studying the ge...
International audiencePAC-Bayesian bounds are known to be tight and informative when studying the ge...
International audiencePAC-Bayesian bounds are known to be tight and informative when studying the ge...
PAC-Bayesian bounds are known to be tight and informative when studying the generalization ability o...
PAC-Bayesian bounds are known to be tight and informative when studying the generalization ability o...
PAC-Bayesian bounds are known to be tight and informative when studying the generalization ability o...
We establish a disintegrated PAC-Bayesian bound, for classifiers that are trained via continuous-tim...
This tutorial gives a concise overview of existing PAC-Bayesian theory focusing on three generalizat...
In this work, we construct generalization bounds to understand existing learning algorithms and prop...
We present new PAC-Bayesian generalisation bounds for learning problems with unbounded loss function...
International audiencePAC-Bayesian learning bounds are of the utmost interest to the learning commun...
International audienceWe propose a PAC-Bayesian theoretical study of the two-phase learning procedur...
International audiencePAC-Bayesian learning bounds are of the utmost interest to the learning commun...
International audienceWe propose a PAC-Bayesian theoretical study of the two-phase learning procedur...
International audiencePAC-Bayesian learning bounds are of the utmost interest to the learning commun...
International audiencePAC-Bayesian bounds are known to be tight and informative when studying the ge...
International audiencePAC-Bayesian bounds are known to be tight and informative when studying the ge...
International audiencePAC-Bayesian bounds are known to be tight and informative when studying the ge...
PAC-Bayesian bounds are known to be tight and informative when studying the generalization ability o...
PAC-Bayesian bounds are known to be tight and informative when studying the generalization ability o...
PAC-Bayesian bounds are known to be tight and informative when studying the generalization ability o...
We establish a disintegrated PAC-Bayesian bound, for classifiers that are trained via continuous-tim...
This tutorial gives a concise overview of existing PAC-Bayesian theory focusing on three generalizat...
In this work, we construct generalization bounds to understand existing learning algorithms and prop...
We present new PAC-Bayesian generalisation bounds for learning problems with unbounded loss function...
International audiencePAC-Bayesian learning bounds are of the utmost interest to the learning commun...
International audienceWe propose a PAC-Bayesian theoretical study of the two-phase learning procedur...
International audiencePAC-Bayesian learning bounds are of the utmost interest to the learning commun...
International audienceWe propose a PAC-Bayesian theoretical study of the two-phase learning procedur...
International audiencePAC-Bayesian learning bounds are of the utmost interest to the learning commun...