Author
Listed:
- Matheus Bernardelli de Moraes
(Faculdade de Tecnologia (FT), Universidade Estadual de Campinas (UNICAMP), Limeira 13484-332, Brazil)
- Guilherme Palermo Coelho
(Faculdade de Tecnologia (FT), Universidade Estadual de Campinas (UNICAMP), Limeira 13484-332, Brazil)
- Reidar B. Bratvold
(Department of Energy Resources, University of Stavanger (UiS), 4036 Stavanger, Norway)
Abstract
In multiobjective decision-making problems, it is common to encounter nondominated alternatives. In these situations, the decision-making process becomes complex, as each alternative offers better outcomes for some objectives and worse outcomes for others simultaneously. However, DMs still must choose a single alternative that provides an acceptable balance between the conflicting objectives, which can become exceedingly challenging. To address this scenario, our work introduces a decision-making framework aimed at supporting such decisions. Our proposed framework draws upon concepts from the field of Multi-Criteria Decision Making, and combines a novel simplex-like weight generation method with expert insights and machine learning data-driven procedures to establish an intuitive methodology that empowers DMs to select a single alternative from a range of alternatives. In this paper, we illustrate the effectiveness of our methodology through an example and two real-world decision cases from the oil and gas industry, each involving 128 alternatives and five distinct objectives.
Suggested Citation
Matheus Bernardelli de Moraes & Guilherme Palermo Coelho & Reidar B. Bratvold, 2025.
"A Machine Learning-Assisted Decision-Making Methodology Based on Simplex Weight Generation for Non-Dominated Alternative Selection,"
Decision Analysis, INFORMS, vol. 22(3), pages 189-205, September.
Handle:
RePEc:inm:ordeca:v:22:y:2025:i:3:p:189-205
DOI: 10.1287/deca.2024.0188
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