We address the problem of sequential prediction with expert advice in a non-stationary environment with long-term memory guarantees in the sense of Bousquet and Warmuth [4]. We give a linear-time algorithm that improves on the best known regret bounds [26]. This algorithm incorporates a relative entropy projection step. This projection is advantageous over previous weight-sharing approaches in that weight updates may come with implicit costs as in for example portfolio optimization. We give an algorithm to compute this projection step in linear time, which may be of independent interest
We consider the problem of online prediction in changing environments. In this framework the perform...
First, we study online learning with an extended notion of regret, which is defined with respect to ...
We introduce a novel online multitask setting. In this setting each task is partitioned into a seque...
In this thesis, we study the problem of adaptive online learning in several different settings. We f...
In this thesis, we study the problem of adaptive online learning in several different settings. We f...
In this thesis, we study the problem of adaptive online learning in several different settings. We f...
For the prediction with expert advice setting, we consider methods to construct algorithms that have...
When dealing with time series with complex non-stationarities, low retrospective regret on individua...
We investigate the problem of cumulative regret minimization for individual sequence prediction with...
We investigate the problem of cumulative regret minimization for individual sequence prediction with...
Abstract. For the prediction with expert advice setting, we consider methods to construct algorithms...
International audienceWe consider a variation on the problem of prediction with expert advice, where...
International audienceWe consider a variation on the problem of prediction with expert advice, where...
International audienceWe consider a variation on the problem of prediction with expert advice, where...
First, we study online learning with an extended notion of regret, which is defined with respect to ...
We consider the problem of online prediction in changing environments. In this framework the perform...
First, we study online learning with an extended notion of regret, which is defined with respect to ...
We introduce a novel online multitask setting. In this setting each task is partitioned into a seque...
In this thesis, we study the problem of adaptive online learning in several different settings. We f...
In this thesis, we study the problem of adaptive online learning in several different settings. We f...
In this thesis, we study the problem of adaptive online learning in several different settings. We f...
For the prediction with expert advice setting, we consider methods to construct algorithms that have...
When dealing with time series with complex non-stationarities, low retrospective regret on individua...
We investigate the problem of cumulative regret minimization for individual sequence prediction with...
We investigate the problem of cumulative regret minimization for individual sequence prediction with...
Abstract. For the prediction with expert advice setting, we consider methods to construct algorithms...
International audienceWe consider a variation on the problem of prediction with expert advice, where...
International audienceWe consider a variation on the problem of prediction with expert advice, where...
International audienceWe consider a variation on the problem of prediction with expert advice, where...
First, we study online learning with an extended notion of regret, which is defined with respect to ...
We consider the problem of online prediction in changing environments. In this framework the perform...
First, we study online learning with an extended notion of regret, which is defined with respect to ...
We introduce a novel online multitask setting. In this setting each task is partitioned into a seque...