In this work, we extend the integration of fuzzy logic in Multi-Criteria Decision-Making (MCDM) problems and its application to ontologies. We define an MCGDM framework where experts assign scores and weights to ontology classes, and each one of them is assigned a fuzzy weight, reflecting their relative importance in the decision process. Each expert select their best choice among the alternatives and a final best compromise A∗ is derived using a minimal mean distance operator, ensuring that the aggregated result optimally reflects expert opinions while minimizing deviations from individual preferences.
Castronovo, L., Filippone, G., Galici, M., La Rosa, G., Tabacchi, M.E. (2025). Ontology Aggregation with Maximum Consensus Based on a Fuzzy Multi-Criteria Group Decision Making Method. In Book of Abstracts - EUSFLAT 2025.
Ontology Aggregation with Maximum Consensus Based on a Fuzzy Multi-Criteria Group Decision Making Method
Lydia Castronovo;Giuseppe Filippone;Mario Galici;Gianmarco La Rosa;Marco Elio Tabacchi
2025-07-21
Abstract
In this work, we extend the integration of fuzzy logic in Multi-Criteria Decision-Making (MCDM) problems and its application to ontologies. We define an MCGDM framework where experts assign scores and weights to ontology classes, and each one of them is assigned a fuzzy weight, reflecting their relative importance in the decision process. Each expert select their best choice among the alternatives and a final best compromise A∗ is derived using a minimal mean distance operator, ensuring that the aggregated result optimally reflects expert opinions while minimizing deviations from individual preferences.| File | Dimensione | Formato | |
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