National audienceWe investigate a stochastic counterpart of majority votes over finite ensembles of classifiers, and study its generalization properties. While our approach holds for arbitrary distributions, we instantiate it with Dirichlet distributions: this allows for a closed-form and differentiable expression for the expected risk, which then turns the generalization bound into a tractable training objective. The resulting stochastic majority vote learning algorithm achieves state-of-the-art accuracy and benefits from (non-vacuous) tight generalization bounds, in a series of numerical experiments when compared to competing algorithms which also minimize PAC-Bayes objectives - both with uninformed (data-independent) and informed (data-d...
We study the generalisation properties of majority voting on finite ensembles of classifiers, provin...
International audienceIn the PAC-Bayesian literature, the C-Bound refers to an insightful relation b...
International audienceIn the PAC-Bayesian literature, the C-Bound refers to an insightful relation b...
National audienceWe investigate a stochastic counterpart of majority votes over finite ensembles of ...
National audienceWe investigate a stochastic counterpart of majority votes over finite ensembles of ...
National audienceWe investigate a stochastic counterpart of majority votes over finite ensembles of ...
International audienceWe investigate a stochastic counterpart of majority votes over finite ensemble...
International audienceWe investigate a stochastic counterpart of majority votes over finite ensemble...
National audienceWe investigate a stochastic counterpart of majority votes over finite ensembles of ...
International audienceWe investigate a stochastic counterpart of majority votes over finite ensemble...
International audienceWe investigate a stochastic counterpart of majority votes over finite ensemble...
We investigate a stochastic counterpart of majority votes over finite ensembles of classifiers, and ...
International audienceWe investigate a stochastic counterpart of majority votes over finite ensemble...
We study the generalisation properties of majority voting on finite ensembles of classifiers, provin...
We study the generalisation properties of majority voting on finite ensembles of classifiers, provin...
We study the generalisation properties of majority voting on finite ensembles of classifiers, provin...
International audienceIn the PAC-Bayesian literature, the C-Bound refers to an insightful relation b...
International audienceIn the PAC-Bayesian literature, the C-Bound refers to an insightful relation b...
National audienceWe investigate a stochastic counterpart of majority votes over finite ensembles of ...
National audienceWe investigate a stochastic counterpart of majority votes over finite ensembles of ...
National audienceWe investigate a stochastic counterpart of majority votes over finite ensembles of ...
International audienceWe investigate a stochastic counterpart of majority votes over finite ensemble...
International audienceWe investigate a stochastic counterpart of majority votes over finite ensemble...
National audienceWe investigate a stochastic counterpart of majority votes over finite ensembles of ...
International audienceWe investigate a stochastic counterpart of majority votes over finite ensemble...
International audienceWe investigate a stochastic counterpart of majority votes over finite ensemble...
We investigate a stochastic counterpart of majority votes over finite ensembles of classifiers, and ...
International audienceWe investigate a stochastic counterpart of majority votes over finite ensemble...
We study the generalisation properties of majority voting on finite ensembles of classifiers, provin...
We study the generalisation properties of majority voting on finite ensembles of classifiers, provin...
We study the generalisation properties of majority voting on finite ensembles of classifiers, provin...
International audienceIn the PAC-Bayesian literature, the C-Bound refers to an insightful relation b...
International audienceIn the PAC-Bayesian literature, the C-Bound refers to an insightful relation b...