We consider a budgeted variant of the problem of learning from expert advice with N experts. Each queried expert incurs a cost and there is a given budget B on the total cost of experts that can be queried in any prediction round. We provide an online learning algorithm for this setting with regret after T prediction rounds bounded by O(sqrt(C log(N)T/B)), where C is the total cost of all experts. We complement this upper bound with a nearly matching lower bound Omega(sqrt(CT/B)) on the regret of any algorithm for this problem. We also provide experimental validation of our algorithm
We study two problems of online learning under restricted information access. In the first problem, ...
We investigate label efficient prediction, a variant, proposed by Helmbold and Panizza, of the probl...
This paper compares two methods of prediction with expert advice, the Aggregating Algorithm and the ...
We consider a budgeted variant of the problem of learning from expert advice with N experts. Each qu...
AbstractIn this paper, we consider the problem of online prediction using expert advice. Under diffe...
Online recommendation systems have been widely used by retailers, digital marketing, and especially ...
We consider the problem of prediction with expert advice in the setting where a forecaster is presen...
We investigate the problem of cumulative regret minimization for individual sequence prediction with...
We consider the problem of prediction with expert advice in the setting where a forecaster is presen...
We study two problems of online learning un-der restricted information access. In the first problem,...
In the framework of prediction with expert advice, we consider a recently introduced kind of regret ...
International audienceWe consider a variation on the problem of prediction with expert advice, where...
International audienceWe investigate the problem of minimizing the excess generalization error with ...
Most standard algorithms for prediction with expert advice depend on a parameter called the learning...
Abstract. We study online learning algorithms that predict by com-bining the predictions of several ...
We study two problems of online learning under restricted information access. In the first problem, ...
We investigate label efficient prediction, a variant, proposed by Helmbold and Panizza, of the probl...
This paper compares two methods of prediction with expert advice, the Aggregating Algorithm and the ...
We consider a budgeted variant of the problem of learning from expert advice with N experts. Each qu...
AbstractIn this paper, we consider the problem of online prediction using expert advice. Under diffe...
Online recommendation systems have been widely used by retailers, digital marketing, and especially ...
We consider the problem of prediction with expert advice in the setting where a forecaster is presen...
We investigate the problem of cumulative regret minimization for individual sequence prediction with...
We consider the problem of prediction with expert advice in the setting where a forecaster is presen...
We study two problems of online learning un-der restricted information access. In the first problem,...
In the framework of prediction with expert advice, we consider a recently introduced kind of regret ...
International audienceWe consider a variation on the problem of prediction with expert advice, where...
International audienceWe investigate the problem of minimizing the excess generalization error with ...
Most standard algorithms for prediction with expert advice depend on a parameter called the learning...
Abstract. We study online learning algorithms that predict by com-bining the predictions of several ...
We study two problems of online learning under restricted information access. In the first problem, ...
We investigate label efficient prediction, a variant, proposed by Helmbold and Panizza, of the probl...
This paper compares two methods of prediction with expert advice, the Aggregating Algorithm and the ...