Conditional Markov Chain Search for the Simple Plant Location Problem improves upper bounds on twelve K\"orkel-Ghosh instances
Daniel Karapetyan, Boris Goldengorin

TL;DR
This paper introduces a new automated heuristic algorithm for the Simple Plant Location Problem, which improves upper bounds on difficult instances by using Conditional Markov Chain Search to optimize algorithm configurations.
Contribution
The paper presents a novel automated framework combining human-designed components with CMCS to enhance solution quality for complex benchmark instances.
Findings
Matched all previous best solutions
Improved 12 upper bounds
Achieved results with shorter time budgets
Abstract
We address a family of hard benchmark instances for the Simple Plant Location Problem (also known as the Uncapacitated Facility Location Problem). The recent attempt by Fischetti et al. to tackle the K\"orkel-Ghosh instances resulted in seven new optimal solutions and 22 improved upper bounds. We use automated generation of heuristics to obtain a new algorithm for the Simple Plant Location Problem. In our experiments, our new algorithm matched all the previous best known and optimal solutions, and further improved 12 upper bounds, all within shorter time budgets compared to the previous efforts. Our algorithm design process is split into two phases: (i) development of algorithmic components such as local search procedures and mutation operators, and (ii) composition of a metaheuristic from the available components. Phase (i) requires human expertise and often can be completed by…
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Taxonomy
TopicsVehicle Routing Optimization Methods · Maritime Ports and Logistics · Advanced Manufacturing and Logistics Optimization
