We consider a model for online computation in which the online algorithm receives, together with each request, some information regarding the future, referred to as advice. The advice provided to the online algorithm may allow an improvement in its performance, compared to the classical model of complete lack of information regarding the future. We are interested in the impact of such advice on the competitive ratio, and in particular, in the relation between the size b of the advice, measured in terms of bits of information per request, and the (improved) competitive ratio. Since b = 0 corresponds to the classical online model, and b = dlog |A|e, where A is the algorithm’s action space, corresponds to the optimal (offline) one, our model s...
Online algorithms are of importance for many practical applications. Typical examples involve schedu...
We study the relationship between the competitive ratio and the tail distribution of randomized onli...
International audienceWe study the fundamental online k-server problem in a learning-augmented setti...
Abstract. We consider a model for online computation in which the online algorithm receives, togethe...
AbstractWe consider a model for online computation in which the online algorithm receives, together ...
Abstract. We consider the model of online computation with advice [6]. In particular, we study the k...
In online problems, the input forms a finite sequence of requests. Each request must be processed, i...
AbstractBorodin et al. (1992) introduce a general model for online systems in [3] called task system...
the supervisor, Adi Rosén, is not fluent enough in French. Le contexte général In online computat...
We generalize the model of online computation with three players (algorithm, adversary and an oracle...
We study the relationship between the competitive ratio and the tail distribution of randomized onli...
In an online problem, the input is revealed one piece at a time. In every time step, the online algo...
We study the relationship between the competitive ratio and the tail distribution of randomized onli...
Abstract. The advice complexity of an online problem is a measure of how much knowledge of the futur...
We introduce AdaptPD, an automated physical design tool that improves database performance by contin...
Online algorithms are of importance for many practical applications. Typical examples involve schedu...
We study the relationship between the competitive ratio and the tail distribution of randomized onli...
International audienceWe study the fundamental online k-server problem in a learning-augmented setti...
Abstract. We consider a model for online computation in which the online algorithm receives, togethe...
AbstractWe consider a model for online computation in which the online algorithm receives, together ...
Abstract. We consider the model of online computation with advice [6]. In particular, we study the k...
In online problems, the input forms a finite sequence of requests. Each request must be processed, i...
AbstractBorodin et al. (1992) introduce a general model for online systems in [3] called task system...
the supervisor, Adi Rosén, is not fluent enough in French. Le contexte général In online computat...
We generalize the model of online computation with three players (algorithm, adversary and an oracle...
We study the relationship between the competitive ratio and the tail distribution of randomized onli...
In an online problem, the input is revealed one piece at a time. In every time step, the online algo...
We study the relationship between the competitive ratio and the tail distribution of randomized onli...
Abstract. The advice complexity of an online problem is a measure of how much knowledge of the futur...
We introduce AdaptPD, an automated physical design tool that improves database performance by contin...
Online algorithms are of importance for many practical applications. Typical examples involve schedu...
We study the relationship between the competitive ratio and the tail distribution of randomized onli...
International audienceWe study the fundamental online k-server problem in a learning-augmented setti...