This paper presents Bayesian frameworks for different tasks within multi-criteria decision-making (MCDM) based on a probabilistic interpretation of the MCDM methods and problems. Owing to the flexibility of Bayesian models, the proposed frameworks can address several long-standing and fundamental challenges in MCDM, including group decision-making problems and criteria correlation, in a statistically elegant manner. Also, the models can accommodate different forms of uncertainty in the preferences of the decision makers (DMs), such as normal and triangular distributions as well as interval preferences. Further, a probabilistic mixture model is developed that can group the DMs into several exhaustive classes. A probabilistic ranking scheme is also designed for both criteria and alternatives, where it identifies the extent to which one criterion/alternative is more important than another based on the DM(s) preferences. The experiments validate the outcome of the proposed frameworks on several numerical examples and highlight its salient features compared to other methods.
翻译:本文件介绍了基于对多边标准决策方法和问题的概率解释的多标准决策中不同任务贝叶斯框架;由于巴伊西亚模式的灵活性,拟议框架可以以统计上优雅的方式应对多边标准决策中若干长期存在的基本挑战,包括集体决策问题和标准相关性;此外,这些模式可以顾及决策者偏好中不同形式的不确定性,如正常和三角分布以及间隙偏好;此外,还制定了一种概率混合模式,可将模式分为若干详尽无遗的类别;还针对标准和备选办法设计了一种概率排序办法,其中根据模式的偏好,确定了一种标准/备选方案比另一种标准/备选方案更重要的程度;这些实验在几个数字实例上验证了拟议框架的结果,并突出其与其他方法相比的突出特点。