Abstract. Recently, a new measurement – the advice complexity – was introduced for measuring the information content of online problems. The aim is to measure the bitwise information that online algorithms lack, causing them to perform worse than offline algo-rithms. Among a large number of problems, a well-known scheduling problem, job shop scheduling with unit length tasks, and the paging problem were analyzed within this model. We observe some connections between advice complexity and randomization. Our special focus goes to barely random algorithms, i. e., randomized algorithms that use only a con-stant number of random bits, regardless of the input size. We apply the results on advice complexity to obtain efficient barely random algori...
Abstract. We consider the model of online computation with advice [6]. In particular, we study the k...
We show a principled way of deriving online learning algorithms from a minimax analysis. Various upp...
Randomness can help to solve problems and is a fundamental ingredient and tool in modern com-plexity...
Recently, a new measurement – the advice complexity – was introduced for measuring the information c...
In online problems, the input forms a finite sequence of requests. Each request must be processed, i...
Abstract. The advice complexity of an online problem is a measure of how much knowledge of the futur...
Online algorithms are of importance for many practical applications. Typical examples involve schedu...
We propose a new way of characterizing the complexity of online problems. Instead of measuring the d...
Abstract. In this paper, we study the advice complexity of the online bin packing problem. In this w...
We consider the online bin packing problem under the advice complexity model where the "online const...
Abstract. The advice complexity of an online problem describes the additional information both neces...
There are many open problems in the field of complexity. This means that, when analyzing the comple...
Abstract. We consider a model for online computation in which the online algorithm receives, togethe...
International audienceWhile randomized online algorithms have access to a sequence of uniform random...
We study one of the most basi problems in online s hedul-ing. A sequen e of jobs has to be s hedule...
Abstract. We consider the model of online computation with advice [6]. In particular, we study the k...
We show a principled way of deriving online learning algorithms from a minimax analysis. Various upp...
Randomness can help to solve problems and is a fundamental ingredient and tool in modern com-plexity...
Recently, a new measurement – the advice complexity – was introduced for measuring the information c...
In online problems, the input forms a finite sequence of requests. Each request must be processed, i...
Abstract. The advice complexity of an online problem is a measure of how much knowledge of the futur...
Online algorithms are of importance for many practical applications. Typical examples involve schedu...
We propose a new way of characterizing the complexity of online problems. Instead of measuring the d...
Abstract. In this paper, we study the advice complexity of the online bin packing problem. In this w...
We consider the online bin packing problem under the advice complexity model where the "online const...
Abstract. The advice complexity of an online problem describes the additional information both neces...
There are many open problems in the field of complexity. This means that, when analyzing the comple...
Abstract. We consider a model for online computation in which the online algorithm receives, togethe...
International audienceWhile randomized online algorithms have access to a sequence of uniform random...
We study one of the most basi problems in online s hedul-ing. A sequen e of jobs has to be s hedule...
Abstract. We consider the model of online computation with advice [6]. In particular, we study the k...
We show a principled way of deriving online learning algorithms from a minimax analysis. Various upp...
Randomness can help to solve problems and is a fundamental ingredient and tool in modern com-plexity...