Intuitionistic multiplicative MABAC method and its application on multi criteria decision making
Künye
Köseoğlu, A. (2025). Intuitionistic Multiplicative MABAC method and its application on multi criteria decision making. In Lecture notes in networks and systems (pp. 496–503). https://doi.org/10.1007/978-3-031-97985-9_55Özet
Intuitionistic multiplicative sets, an extension of multiplicative preference relations, incorporate both asymmetrical and non-uniform membership and non-membership degrees, making them particularly useful for handling uncertainty in decision-making problems. These sets have been widely studied in the literature and applied across various domains, including engineering, economics, and artificial intelligence. In this study, we extend the Multi-Attributive Border Approximation Area Comparison (MABAC) method, a well-established multi-criteria decision-making (MCDM) approach, by integrating intuitionistic multiplicative set elements into its framework. This extension enhances the MABAC method’s ability to process decision-making problems involving uncertain, asymmetrical, and non-uniform data, making it a more robust and flexible approach in complex decision environments. To demonstrate the effectiveness of the proposed intuitionistic multiplicative MABAC (IM-MABAC) method, a numerical example is presented, illustrating its applicability in a real-world decision-making scenario. Furthermore, a comparative analysis with other well-known MCDM methods, such as intuitionistic multiplicative TOPSIS (IM-TOPSIS) and intuitionistic multiplicative TODIM (IM-TODIM), is conducted to validate its reliability and consistency. The results indicate that the intuitionistic multiplicative MABAC method provides a structured and systematic decision-making framework, offering an alternative approach for handling imprecise and uncertain information in multi-criteria problems.