When applying aggregating strategies to Prediction with Expert Advice, the learning rate must be adaptively tuned. The natural choice of square ( complexity/current loss) renders the analysis of Weighted Majority derivatives quite complicated. In particular, for arbitrary weights there have been no results proven so far. The analysis of the alternative “Follow the Perturbed Leader” (FPL) algorithm from [KV03] (based on Hannan’s algorithm) is easier. We derive loss bounds for adaptive learning rate and both finite expert classes with uniform weights and countable expert classes with arbitrary weights. For the former setup, our loss bounds match the best known results so far, while for the latter our results are new.This work was su...
We study the fundamental problem of prediction with expert advice and develop regret lower bounds fo...
We apply the method of defensive forecasting, based on the use of game-theoretic supermartingales, t...
AbstractWe consider the problem of learning to predict as well as the best in a group of experts mak...
When applying aggregating strategies to Prediction with Expert Advice (PEA), the learning rate must...
When applying aggregating strategies to Prediction with Expert Advice, the learning rate must be ada...
Most standard algorithms for prediction with expert advice depend on a parameter called the learning...
In this paper the sequential prediction problem with expert ad-vice is considered for the case where...
When applying aggregating strategies to Prediction with Expert Advice (PEA), the learning rate must ...
We consider two broad families of non-additive loss functions covering a large number of application...
This paper compares two methods of prediction with expert advice, the Aggregating Algorithm and the ...
International audienceWe investigate the problem of minimizing the excess generalization error with ...
Abstract. We study online learning algorithms that predict by com-bining the predictions of several ...
Follow-the-Leader (FTL) is an intuitive sequential prediction strategy that guarantees constant regr...
AbstractWe study on-line learning in the linear regression framework. Most of the performance bounds...
We introduce a new protocol for prediction with expert advice in which each expert evaluates the lea...
We study the fundamental problem of prediction with expert advice and develop regret lower bounds fo...
We apply the method of defensive forecasting, based on the use of game-theoretic supermartingales, t...
AbstractWe consider the problem of learning to predict as well as the best in a group of experts mak...
When applying aggregating strategies to Prediction with Expert Advice (PEA), the learning rate must...
When applying aggregating strategies to Prediction with Expert Advice, the learning rate must be ada...
Most standard algorithms for prediction with expert advice depend on a parameter called the learning...
In this paper the sequential prediction problem with expert ad-vice is considered for the case where...
When applying aggregating strategies to Prediction with Expert Advice (PEA), the learning rate must ...
We consider two broad families of non-additive loss functions covering a large number of application...
This paper compares two methods of prediction with expert advice, the Aggregating Algorithm and the ...
International audienceWe investigate the problem of minimizing the excess generalization error with ...
Abstract. We study online learning algorithms that predict by com-bining the predictions of several ...
Follow-the-Leader (FTL) is an intuitive sequential prediction strategy that guarantees constant regr...
AbstractWe study on-line learning in the linear regression framework. Most of the performance bounds...
We introduce a new protocol for prediction with expert advice in which each expert evaluates the lea...
We study the fundamental problem of prediction with expert advice and develop regret lower bounds fo...
We apply the method of defensive forecasting, based on the use of game-theoretic supermartingales, t...
AbstractWe consider the problem of learning to predict as well as the best in a group of experts mak...