We derive new margin-based inequalities for the probability of error of classifiers. The main feature of these bounds is that they can be calculated using the training data and therefore may be effectively used for model selection purposes. In particular, the bounds involve empirical complexities measured on the training data (such as the empirical fatshattering dimension) as opposed to their worst-case counterparts traditionally used in such analyses. Also, our bounds appear to be sharper and more general than recent results involving empirical complexity measures. In addition, we develop an alternative data-based bound for the generalization error of classes of convex combinations of classifiers involving an empirical complexity measure t...
Anumber of results have bounded generalization of a classi er in terms of its margin on the training...
Recent theoretical results have shown that im-proved bounds on generalization error of clas-siers ca...
Recent theoretical results have shown that the generalization performance of thresholded convex comb...
We derive new margin-based inequalities for the probability of error of classifiers. The main featur...
A number of results have bounded generalization of a classier in terms of its margin on the training...
A number of results have bounded generalization error of a classifier in terms of its margin on the ...
A number of results have bounded generalization of a classier in terms of its margin on the training...
We study generalization properties of linear learning algorithms and develop a data dependent approa...
We study generalization properties of linear learning algorithms and develop a data dependent approa...
In this paper we propose a general framework to study the generalization properties of binary classi...
A number of results have bounded generalization of a classifier in terms of its margin on the traini...
International audienceIn this paper we propose a general framework to study the generalization prope...
We derive sharp bounds on the generalization error of a generic linear classifier trained by empiric...
This paper analyses the predictive performance of standard techniques for the `logical analysis of d...
AbstractWe derive an upper bound on the generalization error of classifiers which can be represented...
Anumber of results have bounded generalization of a classi er in terms of its margin on the training...
Recent theoretical results have shown that im-proved bounds on generalization error of clas-siers ca...
Recent theoretical results have shown that the generalization performance of thresholded convex comb...
We derive new margin-based inequalities for the probability of error of classifiers. The main featur...
A number of results have bounded generalization of a classier in terms of its margin on the training...
A number of results have bounded generalization error of a classifier in terms of its margin on the ...
A number of results have bounded generalization of a classier in terms of its margin on the training...
We study generalization properties of linear learning algorithms and develop a data dependent approa...
We study generalization properties of linear learning algorithms and develop a data dependent approa...
In this paper we propose a general framework to study the generalization properties of binary classi...
A number of results have bounded generalization of a classifier in terms of its margin on the traini...
International audienceIn this paper we propose a general framework to study the generalization prope...
We derive sharp bounds on the generalization error of a generic linear classifier trained by empiric...
This paper analyses the predictive performance of standard techniques for the `logical analysis of d...
AbstractWe derive an upper bound on the generalization error of classifiers which can be represented...
Anumber of results have bounded generalization of a classi er in terms of its margin on the training...
Recent theoretical results have shown that im-proved bounds on generalization error of clas-siers ca...
Recent theoretical results have shown that the generalization performance of thresholded convex comb...