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arxiv: 1701.06317 · v1 · pith:EHKVEOUUnew · submitted 2017-01-23 · 🧮 math.OC

Multi-objective minmax robust combinatorial optimization with cardinality-constrained uncertainty

classification 🧮 math.OC
keywords multi-objectiveproblemalgorithmdevelopoptimizationrobustapproachescardinality-constrained
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In this paper we develop two approaches to find minmax robust efficient solutions for multi-objective combinatorial optimization problems with cardinality-constrained uncertainty. First, we extend an algorithm of Bertsimas and Sim (2003) for the single-objective problem to multi-objective optimization. We propose also an enhancement to accelerate the algorithm, even for the single-objective case, and we develop a faster version for special multi-objective instances. Second, we introduce a deterministic multi-objective problem with sum and bottleneck functions, which provides a superset of the robust efficient solutions. Based on this, we develop a label setting algorithm to solve the multi-objective uncertain shortest path problem. We compare both approaches on instances of the multi-objective uncertain shortest path problem originating from hazardous material transportation.

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