Abstract. Demand-robust versions of common optimization problems were recently introduced by Dhamdhere et al. [4] motivated by the worst-case considerations of two-stage stochastic optimization models. We study the demand robust min-cut and shortest path problems, and exploit the nature of the robust objective to give improved approximation factors. Specifically, we give a (1 + √ 2) approximation for robust min-cut and a 7.1 approximation for robust shortest path. Previously, the best approximation factors were O(log n) for robust min-cut and 16 for robust shortest paths, both due to Dhamdhere et al. [4]. Our main technique can be summarized as follows: We investigate each of the second stage scenarios individually, checking if it can be in...
Minmax regret optimization aims at finding robust solutions that perform best in the worst-case, com...
In this invited contribution, we revisit the stochastic shortest path problem, and show how recent r...
Gupta et al. [J. ACM, 54 (2007), article 11] and Gupta, Kumar, and Roughgarden [in Proceedings of th...
Abstract. Demand-robust versions of common optimization problems were re-cently introduced by Dhamdh...
In two-stage robust optimization the solution to a problem is built in two stages: In the first stag...
Robust optimization has traditionally focused on uncertainty in data and costs in optimization probl...
Robust optimization has traditionally focused on uncer-tainty in data and costs in optimization prob...
Abstract In this paper, we study the robust and stochastic versions of the two-stage min-cut and sho...
The general problem of robust optimization is this: one of several possible scenarios will appear to...
We consider a class of multi-stage robust covering problems, where additional information is reveale...
We extend the standard concept of robust optimization by the introduction of an alternative solution...
Recoverable robustness is a concept to avoid over-conservatism in robust optimization by allowing a ...
Real-life planning problems are often complicated by the occurrence of disturbances, which imply tha...
In optimization, it is common to deal with uncertain and inaccurate factors which make it difficult ...
AbstractIn this paper the minimum spanning tree problem with uncertain edge costs is discussed. In o...
Minmax regret optimization aims at finding robust solutions that perform best in the worst-case, com...
In this invited contribution, we revisit the stochastic shortest path problem, and show how recent r...
Gupta et al. [J. ACM, 54 (2007), article 11] and Gupta, Kumar, and Roughgarden [in Proceedings of th...
Abstract. Demand-robust versions of common optimization problems were re-cently introduced by Dhamdh...
In two-stage robust optimization the solution to a problem is built in two stages: In the first stag...
Robust optimization has traditionally focused on uncertainty in data and costs in optimization probl...
Robust optimization has traditionally focused on uncer-tainty in data and costs in optimization prob...
Abstract In this paper, we study the robust and stochastic versions of the two-stage min-cut and sho...
The general problem of robust optimization is this: one of several possible scenarios will appear to...
We consider a class of multi-stage robust covering problems, where additional information is reveale...
We extend the standard concept of robust optimization by the introduction of an alternative solution...
Recoverable robustness is a concept to avoid over-conservatism in robust optimization by allowing a ...
Real-life planning problems are often complicated by the occurrence of disturbances, which imply tha...
In optimization, it is common to deal with uncertain and inaccurate factors which make it difficult ...
AbstractIn this paper the minimum spanning tree problem with uncertain edge costs is discussed. In o...
Minmax regret optimization aims at finding robust solutions that perform best in the worst-case, com...
In this invited contribution, we revisit the stochastic shortest path problem, and show how recent r...
Gupta et al. [J. ACM, 54 (2007), article 11] and Gupta, Kumar, and Roughgarden [in Proceedings of th...