The robust shortest path problem with interval data via Benders decomposition |
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Authors: | Roberto Montemanni Luca Maria Gambardella |
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Affiliation: | (1) Istituto Dalle Molle di Studi sull'Intelligenza, Artificiale (IDSIA), Galleria 2, 6928 Lugano-Manno, Switzerland |
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Abstract: | Many real problems can be modelled as robust shortest path problems on digraphs with interval costs, where intervals represent uncertainty about real costs and a robust path is not too far from the shortest path for each possible configuration of the arc costs. In this paper we discuss the application of a Benders decomposition approach to this problem. Computational results confirm the efficiency of the new algorithm. It is able to clearly outperform state-of-the-art algorithms on many classes of networks. For the remaining classes we identify the most promising algorithm among the others, depending of the characteristics of the networks. Received: September 2004 / Accepted: March 2005 AMS classification: 90C47, 52B05, 90C57 The work was partially supported by the European Commission IST projects MOSCA (IST-2000-29557) and BISON (IST-2001-38923). All correspondence to: Roberto Montemanni |
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Keywords: | Shortest path problem robust optimization interval data Benders decomposition |
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