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A General Framework for Providing Interval Representations of Pareto Optimal Outcomes for Large-Scale Bi- and Tri-Criteria MIP Problems
Volume 35, Issue 2 (2024), pp. 255–282
Grzegorz Filcek   Janusz Miroforidis  

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https://doi.org/10.15388/24-INFOR549
Pub. online: 12 April 2024      Type: Research Article      Open accessOpen Access

Received
1 December 2023
Accepted
1 March 2024
Published
12 April 2024

Abstract

The Multi-Objective Mixed-Integer Programming (MOMIP) problem is one of the most challenging. To derive its Pareto optimal solutions one can use the well-known Chebyshev scalarization and Mixed-Integer Programming (MIP) solvers. However, for a large-scale instance of the MOMIP problem, its scalarization may not be solved to optimality, even by state-of-the-art optimization packages, within the time limit imposed on optimization. If a MIP solver cannot derive the optimal solution within the assumed time limit, it provides the optimality gap, which gauges the quality of the approximate solution. However, for the MOMIP case, no information is provided on the lower and upper bounds of the components of the Pareto optimal outcome. For the MOMIP problem with two and three objective functions, an algorithm is proposed to provide the so-called interval representation of the Pareto optimal outcome designated by the weighting vector when there is a time limit on solving the Chebyshev scalarization. Such interval representations can be used to navigate on the Pareto front. The results of several numerical experiments on selected large-scale instances of the multi-objective multidimensional 0–1 knapsack problem illustrate the proposed approach. The limitations and possible enhancements of the proposed method are also discussed.

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Biographies

Filcek Grzegorz
grzegorz.filcek@pwr.edu.pl

G. Filcek is an assistant professor at the Wrocław University of Science and Technology, Poland. He obtained his PhD in computer science from the same institution in 2011. His scientific interests include multi-objective optimization, multiple criteria decision-making, intelligent decision support systems, blockchain technologies, and system engineering.

Miroforidis Janusz
janusz.miroforidis@ibspan.waw.pl

J. Miroforidis is an assistant professor at the Systems Research Institute, Polish Academy of Sciences, Poland. He obtained his PhD in computer science from the same institution in 2010. His scientific interests are multi-objective optimization, multiple criteria decision making, and computer-aided decision making.


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Keywords
multi-objective mixed-integer programming large-scale optimization Chebyshev scalarization Pareto front approximations lower bounds upper bounds

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INFORMATICA

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