239 research outputs found
An Active Set Algorithm for Robust Combinatorial Optimization Based on Separation Oracles
We address combinatorial optimization problems with uncertain coefficients
varying over ellipsoidal uncertainty sets. The robust counterpart of such a
problem can be rewritten as a second-oder cone program (SOCP) with integrality
constraints. We propose a branch-and-bound algorithm where dual bounds are
computed by means of an active set algorithm. The latter is applied to the
Lagrangian dual of the continuous relaxation, where the feasible set of the
combinatorial problem is supposed to be given by a separation oracle. The
method benefits from the closed form solution of the active set subproblems and
from a smart update of pseudo-inverse matrices. We present numerical
experiments on randomly generated instances and on instances from different
combinatorial problems, including the shortest path and the traveling salesman
problem, showing that our new algorithm consistently outperforms the
state-of-the art mixed-integer SOCP solver of Gurobi
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Efficient KKT reformulations for bilevel linear programming
It is a well-known result that bilevel linear programming is NP-hard. In many
publications, reformulations as mixed-integer linear programs are proposed,
which suggests that the decision version of the problem belongs to NP. However,
to the best of our knowledge, a rigorous proof of membership in NP has never
been published, so we close this gap by reporting a simple but not entirely
trivial proof. A related question is whether a large enough "big M" for the
classical KKT-based reformulation can be computed efficiently, which we answer
in the affirmative. In particular, our big M has polynomial encoding length in
the original problem data
A fast branch-and-bound algorithm for non-convex quadratic integer optimization subject to linear constraints using ellipsoidal relaxations
We propose two exact approaches for non-convex quadratic integer minimization subject to linear constraints where lower bounds are computed by considering ellipsoidal relaxations of the feasible set. In the first approach, we intersect the ellipsoids with the feasible linear subspace. In the second approach we penalize exactly the linear constraints. We investigate the connection between both approaches theoretically. Experimental results show that the penalty approach significantly outperforms CPLEX on problems with small or medium size variable domains. © 2015 Elsevier B.V. All rights reserved
Compact and Extended Formulations for Range Assignment Problems
We devise two new integer programming models for range assignment problems arising in wireless network design. Building on an arbitrary set of feasible network topologies, e.g., all spanning trees, we explicitly model the power consumption at a given node as a weighted maximum over edge variables. We show that the standard ILP model is an extended formulation of the new models. For all models, we derive complete polyhedral descriptions in the unconstrained case where all topologies are allowed. These results give rise to tight relaxations even in the constrained case. We can show experimentally that the compact formulations compare favorably to the standard approach
Linear Optimization over Permutation Groups
For a permutation group given by a set of generators, the problem of finding "special" group members is NP-hard in many cases. E.g., this is true for the problem of finding a permutation with a minimum number of fixed points or a permutation with a minimal Hamming distance from a given permutation. Many of these problems can be modeled as linear optimization problems over permutation groups. We develop a polyhedral approach to this general problem and derive an exact and practically fast algorithm based on the branch&cut-technique
The robust bilevel continuous knapsack problem with uncertain follower's objective
We consider a bilevel continuous knapsack problem where the leader controls
the capacity of the knapsack and the follower chooses an optimal packing
according to his own profits, which may differ from those of the leader. To
this bilevel problem, we add uncertainty in a natural way, assuming that the
leader does not have full knowledge about the follower's problem. More
precisely, adopting the robust optimization approach and assuming that the
follower's profits belong to a given uncertainty set, our aim is to compute a
solution that optimizes the worst-case follower's reaction from the leader's
perspective. By investigating the complexity of this problem with respect to
different types of uncertainty sets, we make first steps towards better
understanding the combination of bilevel optimization and robust combinatorial
optimization. We show that the problem can be solved in polynomial time for
both discrete and interval uncertainty, but that the same problem becomes
NP-hard when each coefficient can independently assume only a finite number of
values. In particular, this demonstrates that replacing uncertainty sets by
their convex hulls may change the problem significantly, in contrast to the
situation in classical single-level robust optimization. For general polytopal
uncertainty, the problem again turns out to be NP-hard, and the same is true
for ellipsoidal uncertainty even in the uncorrelated case. All presented
hardness results already apply to the evaluation of the leader's objective
function
Compact and Extended Formulations for Range Assignment Problems
We devise two new integer programming models for range assignment problems arising in wireless network design. Building on an arbitrary set of feasible network topologies, e.g., all spanning trees, we explicitly model the power consumption at a given node as a weighted maximum over edge variables. We show that the standard ILP model is an extended formulation of the new models. For all models, we derive complete polyhedral descriptions in the unconstrained case where all topologies are allowed. These results give rise to tight relaxations even in the constrained case. We can show experimentally that the compact formulations compare favorably to the standard approach
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