International audienceIn the PAC-Bayesian literature, the C-Bound refers to an insightful relation between the risk of a majority vote classifier (under the zero-one loss) and the first two moments of its margin (i.e., the expected margin and the voters' diversity). Until now, learning algorithms developed in this framework minimize the empirical version of the C-Bound, instead of explicit PAC-Bayesian generalization bounds. In this paper, by directly optimizing PAC-Bayesian guarantees on the C-Bound, we derive self-bounding majority vote learning algorithms. Moreover, our algorithms based on gradient descent are scalable and lead to accurate predictors paired with non-vacuous guarantees
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 ...
We investigate a stochastic counterpart of majority votes over finite ensembles of classifiers, and ...
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...
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...
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...
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 ...
National audienceWe investigate a stochastic counterpart of majority votes over finite ensembles of ...
We investigate a stochastic counterpart of majority votes over finite ensembles of classifiers, and ...
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...
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...
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...
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 ...
National audienceWe investigate a stochastic counterpart of majority votes over finite ensembles of ...
We investigate a stochastic counterpart of majority votes over finite ensembles of classifiers, and ...