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一种高效的基于混合整数线性规划的算法,用于处理权重不完整或冲突情况下的定性灵活多准则方法

An efficient MILP-based algorithm for the qualitative flexible multi-criteria method under incomplete or conflicting weights

Computers and Operations Research · 2024
被引 2
ABS 3

中文导读

提出了一种混合整数线性规划模型,扩展了QUALIFLEX方法,能高效处理多准则决策问题,尤其适用于权重信息不完整或冲突的情况,计算时间优于传统方法。

Abstract

This study first proposes a mixed-integer linear programming model for the qualitative flexible multi-criteria method (QUALIFLEX) within an interval type-2 fuzzy environment. This extends an efficient QUALIFLEX method that already exists in the literature. The computational complexity of QUALIFLEX grows exponentially with an increase in the number of alternatives, and the extended model efficiently solves a multi-criteria decision problem and determines the best permutation regardless of the number of alternatives. A new QUALIFLEX algorithm is also developed to handle imprecise and conflicting preference structures for criteria weights. This algorithm includes both a single-objective and a bi-objective model to address incomplete and conflicting weight information, respectively, and these models are subsequently linearized. The newly developed algorithm solves the models only once to produce the best permutation and the corresponding weights, rather than requiring the solution of m ! nonlinear models as in previous studies. The implications of the proposed extended and developed algorithms are illustrated using numerical examples, and their performance is analyzed against existing methods across a set of 30 problems with varying numbers of alternatives. The formulated model achieves similar results to the previous version with a limited number of alternatives using only one model-solving attempt and demonstrates superior performance in terms of computation time for problems with a larger number of alternatives.

多准则决策运筹学模糊决策数学优化