Priorities in multi-criteria decision-making (MCDM) convey the relevance preference of one criterion over another, which is usually reflected by imposing the non-negativity and unit-sum constraints. The processing of such priorities is different than other unconstrained data, but this point is often neglected by researchers, which results in fallacious statistical analysis. This article studies three prevalent fallacies in group MCDM along with solutions based on compositional data analysis to avoid misusing statistical operations. First, we use a compositional approach to aggregate the priorities of a group of DMs and show that the outcome of the compositional analysis is identical to the normalized geometric mean, meaning that the arithmetic mean should be avoided. Furthermore, a new aggregation method is developed, which is a robust surrogate for the geometric mean. We also discuss the errors in computing measures of dispersion, including standard deviation and distance functions. Discussing the fallacies in computing the standard deviation, we provide a probabilistic criteria ranking by developing proper Bayesian tests, where we calculate the extent to which a criterion is more important than another. Finally, we explain the errors in computing the distance between priorities, and a clustering algorithm is specially tailored based on proper distance metrics.
翻译:多准则决策(MCDM)中的优先级体现了一种准则比另一种更为重要的倾向性,通常通过强制非负性和单位和约束来反映。这些优先级的处理与其他无约束数据的处理方式不同,但是研究人员往往忽略了这一点,从而导致统计分析上的谬误。本文研究了群体MCDM中存在的三种普遍的谬误,通过组成数据分析来提出了避免误用统计操作的解决方案。首先,我们使用组成方法来聚合DM群体的优先级,并证明组成分析的结果与规范化几何平均值相同,这意味着应该避免使用算术平均值。此外,我们开发了一种新的聚合方法,作为几何平均值的健壮性替代品。我们还讨论了计算离散度的误差,包括标准偏差和距离函数。在讨论计算标准偏差的误差时,我们通过开发适当的贝叶斯检验,提供了一种概率准则排名的计算方法,可以计算一个准则比另一个准则更重要的程度。最后,我们解释了计算优先级之间距离的误差,并专门针对适当的距离度量开发了一个聚类算法。