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A min-max regret approach for the Steiner Tree Problem with Interval Costs

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 Added by Iago Carvalho M.Sc.
 Publication date 2021
  fields
and research's language is English




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Let G=(V,E) be a connected graph, where V and E represent, respectively, the node-set and the edge-set. Besides, let Q subseteq V be a set of terminal nodes, and r in Q be the root node of the graph. Given a weight c_{ij} in mathbb{N} associated to each edge (i,j) in E, the Steiner Tree Problem in graphs (STP) consists in finding a minimum-weight subgraph of G that spans all nodes in Q. In this paper, we consider the Min-max Regret Steiner Tree Problem with Interval Costs (MMR-STP), a robust variant of STP. In this variant, the weight of the edges are not known in advance, but are assumed to vary in the interval [l_{ij}, u_{ij}]. We develop an ILP formulation, an exact algorithm, and three heuristics for this problem. Computational experiments, performed on generalizations of the classical STP instances, evaluate the efficiency and the limits of the proposed methods.



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