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Dive into the research topics where Arkadi Nemirovski is active.

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Featured researches published by Arkadi Nemirovski.


Mathematics of Operations Research | 1998

Robust Convex Optimization

Aharon Ben-Tal; Arkadi Nemirovski

We study convex optimization problems for which the data is not specified exactly and it is only known to belong to a given uncertainty set U, yet the constraints must hold for all possible values of the data from U. The ensuing optimization problem is called robust optimization. In this paper we lay the foundation of robust convex optimization. In the main part of the paper we show that if U is an ellipsoidal uncertainty set, then for some of the most important generic convex optimization problems (linear programming, quadratically constrained programming, semidefinite programming and others) the corresponding robust convex program is either exactly, or approximately, a tractable problem which lends itself to efficientalgorithms such as polynomial time interior point methods.


Operations Research Letters | 1999

Robust solutions of uncertain linear programs

Aharon Ben-Tal; Arkadi Nemirovski

We treat in this paper linear programming (LP) problems with uncertain data. The focus is on uncertainty associated with hard constraints: those which must be satisfied, whatever is the actual realization of the data (within a prescribed uncertainty set). We suggest a modeling methodology whereas an uncertain LP is replaced by its robust counterpart (RC). We then develop the analytical and computational optimization tools to obtain robust solutions of an uncertain LP problem via solving the corresponding explicitly stated convex RC program. In particular, it is shown that the RC of an LP with ellipsoidal uncertainty set is computationally tractable, since it leads to a conic quadratic program, which can be solved in polynomial time.


Mathematical Programming | 2000

Robust solutions of Linear Programming problems contaminated with uncertain data

Aharon Ben-Tal; Arkadi Nemirovski

Abstract.Optimal solutions of Linear Programming problems may become severely infeasible if the nominal data is slightly perturbed. We demonstrate this phenomenon by studying 90 LPs from the well-known NETLIB collection. We then apply the Robust Optimization methodology (Ben-Tal and Nemirovski [1–3]; El Ghaoui et al. [5, 6]) to produce “robust” solutions of the above LPs which are in a sense immuned against uncertainty. Surprisingly, for the NETLIB problems these robust solutions nearly lose nothing in optimality.


Mathematical Programming | 2002

Robust optimization – methodology and applications

Aharon Ben-Tal; Arkadi Nemirovski

Abstract.Robust Optimization (RO) is a modeling methodology, combined with computational tools, to process optimization problems in which the data are uncertain and is only known to belong to some uncertainty set. The paper surveys the main results of RO as applied to uncertain linear, conic quadratic and semidefinite programming. For these cases, computationally tractable robust counterparts of uncertain problems are explicitly obtained, or good approximations of these counterparts are proposed, making RO a useful tool for real-world applications. We discuss some of these applications, specifically: antenna design, truss topology design and stability analysis/synthesis in uncertain dynamic systems. We also describe a case study of 90 LPs from the NETLIB collection. The study reveals that the feasibility properties of the usual solutions of real world LPs can be severely affected by small perturbations of the data and that the RO methodology can be successfully used to overcome this phenomenon.


Mathematical Programming | 2004

Adjustable robust solutions of uncertain linear programs

Aharon Ben-Tal; Alexander Goryashko; E. Guslitzer; Arkadi Nemirovski

AbstractWe consider linear programs with uncertain parameters, lying in some prescribed uncertainty set, where part of the variables must be determined before the realization of the uncertain parameters (‘‘non-adjustable variables’’), while the other part are variables that can be chosen after the realization (‘‘adjustable variables’’). We extend the Robust Optimization methodology ([1, 3-6, 9, 13, 14]) to this situation by introducing the Adjustable Robust Counterpart (ARC) associated with an LP of the above structure. Often the ARC is significantly less conservative than the usual Robust Counterpart (RC), however, in most cases the ARC is computationally intractable (NP-hard). This difficulty is addressed by restricting the adjustable variables to be affine functions of the uncertain data. The ensuing Affinely Adjustable Robust Counterpart (AARC) problem is then shown to be, in certain important cases, equivalent to a tractable optimization problem (typically an LP or a Semidefinite problem), and in other cases, having a tight approximation which is tractable. The AARC approach is illustrated by applying it to a multi-stage inventory management problem.


Siam Journal on Optimization | 2006

Convex Approximations of Chance Constrained Programs

Arkadi Nemirovski; Alexander Shapiro

We consider a chance constrained problem, where one seeks to minimize a convex objective over solutions satisfying, with a given close to one probability, a system of randomly perturbed convex constraints. This problem may happen to be computationally intractable; our goal is to build its computationally tractable approximation, i.e., an efficiently solvable deterministic optimization program with the feasible set contained in the chance constrained problem. We construct a general class of such convex conservative approximations of the corresponding chance constrained problem. Moreover, under the assumptions that the constraints are affine in the perturbations and the entries in the perturbation vector are independent-of-each-other random variables, we build a large deviation-type approximation, referred to as “Bernstein approximation,” of the chance constrained problem. This approximation is convex and efficiently solvable. We propose a simulation-based scheme for bounding the optimal value in the chance constrained problem and report numerical experiments aimed at comparing the Bernstein and well-known scenario approximation approaches. Finally, we extend our construction to the case of ambiguous chance constrained problems, where the random perturbations are independent with the collection of distributions known to belong to a given convex compact set rather than to be known exactly, while the chance constraint should be satisfied for every distribution given by this set.


Siam Journal on Optimization | 2005

Prox-Method with Rate of Convergence O (1/ t ) for Variational Inequalities with Lipschitz Continuous Monotone Operators and Smooth Convex-Concave Saddle Point Problems

Arkadi Nemirovski

We propose a prox-type method with efficiency estimate


IEEE Transactions on Signal Processing | 2005

Robust mean-squared error estimation in the presence of model uncertainties

Yonina C. Eldar; Aharon Ben-Tal; Arkadi Nemirovski

O(\epsilon^{-1})


Mathematical Programming | 2007

Selected topics in robust convex optimization

Aharon Ben-Tal; Arkadi Nemirovski

for approximating saddle points of convex-concave C


Archive | 2005

On Complexity of Stochastic Programming Problems

Alexander Shapiro; Arkadi Nemirovski

^{1,1}

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Aharon Ben-Tal

Technion – Israel Institute of Technology

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Alexander Shapiro

Georgia Institute of Technology

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Yurii Nesterov

Catholic University of Leuven

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Yonina C. Eldar

Technion – Israel Institute of Technology

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Jochem Zowe

University of Erlangen-Nuremberg

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Renato D. C. Monteiro

Georgia Institute of Technology

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