This paper considers online stochastic scheduling problems where time constraints severely limit the number of offline optimizations which can be performed at decision time and/or in between decisions. Prior research has demonstrated that, whenever a distribution of the inputs is available for sampling, online stochatic algorithms may produce significant improvements in solution quality over oblivious approaches. However, the availability of an input distribution, although reasonable in many contexts, is too strong a requirement in a variety of applications. This paper broadens the applicability of online stochastic algorithms by relaxing this requirement and using machine learning techniques or historical data instead. In part...
We present decision/optimization models/problems driven by uncertain and online data, and show how a...
We introduce a model for non-preemptive scheduling under uncertainty. In this model, we combine the ...
This thesis presents results of our research in the area of optimization problems with incomplete in...
Abstract. This paper considers online stochastic optimization problems whereuncertainties are charac...
This paper considers online stochastic optimization problems where time constraints severely limit t...
In this paper, we investigate the power of online learning in stochastic network optimization with u...
We consider a model for scheduling under, uncertainty. In this model, we combine the main characteri...
In this paper we consider a model for scheduling under uncertainty. Inthis model, we combine the mai...
The characteristic of online algorithms is that the input is not given at once but it is revealed st...
We derive the first performance guarantees for a combinatorial online algorithm that schedules stoch...
We derive the first performance guarantees for a combinatorial online algorithm that schedules stoch...
We consider the stochastic identical parallel machine scheduling problem and its online extension, w...
In this paper we consider a model for scheduling under uncertainty. In this model, we combine the ma...
This paper establishes performance guarantees for online algorithms that schedule stochastic, nonpre...
We consider the stochastic identical parallel machine scheduling problem and its online extension, w...
We present decision/optimization models/problems driven by uncertain and online data, and show how a...
We introduce a model for non-preemptive scheduling under uncertainty. In this model, we combine the ...
This thesis presents results of our research in the area of optimization problems with incomplete in...
Abstract. This paper considers online stochastic optimization problems whereuncertainties are charac...
This paper considers online stochastic optimization problems where time constraints severely limit t...
In this paper, we investigate the power of online learning in stochastic network optimization with u...
We consider a model for scheduling under, uncertainty. In this model, we combine the main characteri...
In this paper we consider a model for scheduling under uncertainty. Inthis model, we combine the mai...
The characteristic of online algorithms is that the input is not given at once but it is revealed st...
We derive the first performance guarantees for a combinatorial online algorithm that schedules stoch...
We derive the first performance guarantees for a combinatorial online algorithm that schedules stoch...
We consider the stochastic identical parallel machine scheduling problem and its online extension, w...
In this paper we consider a model for scheduling under uncertainty. In this model, we combine the ma...
This paper establishes performance guarantees for online algorithms that schedule stochastic, nonpre...
We consider the stochastic identical parallel machine scheduling problem and its online extension, w...
We present decision/optimization models/problems driven by uncertain and online data, and show how a...
We introduce a model for non-preemptive scheduling under uncertainty. In this model, we combine the ...
This thesis presents results of our research in the area of optimization problems with incomplete in...