Algorithm for Optimization of Inverse Problem Modeling in Fuzzy Cognitive Maps

被引:2
|
作者
Petukhova, Alina Vladimirovna [1 ]
Kovalenko, Anna Vladimirovna [2 ]
Ovsyannikova, Anna Vyacheslavovna [3 ]
机构
[1] Lusofona Univ, COPELABS, Campo Grande 376, P-1749024 Lisbon, Portugal
[2] Kuban State Univ, Dept Data Anal & Artificial Intelligence, Stavropolskaya St 149, Krasnodar 350040, Russia
[3] Financial Univ, Dept Mathematicsl, Govt Russian Federat, 49 Leningradsky Prospekt, Moscow 125993, Russia
关键词
fuzzy cognitive maps; scenario modeling; reverse task; fuzzy relational equations; neutrosophic fuzzy equations; RELATIONAL EQUATIONS; SYSTEMS;
D O I
10.3390/math10193452
中图分类号
O1 [数学];
学科分类号
0701 ; 070101 ;
摘要
Managerial decision-making is a complex process that has several problems. The more heterogeneous the system, the more immeasurable, non-numerical information it contains. To understand the cognitive processes involved, it is important to describe in detail their components, define the dependencies between components, and apply relevant algorithms for scenario modelling. Fuzzy cognitive maps (FCMs) is the popular approach for modeling a system's behavior over time and defining its main properties. This work develops a new algorithm for scenario analysis in complex systems represented by FCMs to provide support for decision-making. The algorithm allows researchers to analyze system-development scenarios to obtain the required change to the system's components that leads to the target state. The problem of determining a system's initial state is most conspicuous when constructing a compound or unbalanced fuzzy maps. Currently, a brute force algorithm is used to calculate the steps needed to approach a target, but that takes exponential time. The paper describes a new algorithm to obtain the initial values of the controlled concepts in fuzzy cognitive maps using the theory of neutrosophic fuzzy equations. This approach reduces the time needed to find the optimal solution to a problem, and it allows inverse problems to be solved in the fuzzy cognitive maps as a part of the scenario-modeling framework.
引用
收藏
页数:16
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