Insights into weighted sum sampling approaches for multi-criteria decision making problems

Williams, A.ORCID logo & Cai, Y. (2025). Insights into weighted sum sampling approaches for multi-criteria decision making problems. WSEAS Transactions on Mathematics, 24, 327-346. https://doi.org/10.37394/23206.2025.24.32
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In this paper we explore several approaches for sampling weight vectors in the context of weighted sum scalarisation approaches for solving multi-criteria decision making (MCDM) problems. This established method converts a multi-objective problem into a (single) scalar optimisation problem. It does so by assigning weights to each objective. We outline various methods to select these weights, with a focus on ensuring computational efficiency and avoiding redundancy. The challenges and computational complexity of these approaches are explored and numerical examples are provided. The theoretical results demonstrate the trade-offs between systematic and randomised weight generation techniques, highlighting their performance for different problem settings. These sampling approaches will be tested and compared computationally in an upcoming paper.

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