萨提分析层次/网络过程的缺陷识别与修正:萨提分析层次/网络过程与基于马尔可夫链的分析网络过程的比较研究

IF 3.7 4区 管理学 Q2 OPERATIONS RESEARCH & MANAGEMENT SCIENCE Operations Research Perspectives Pub Date : 2022-01-01 DOI:10.1016/j.orp.2022.100244
Qizhi Liu
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引用次数: 1

摘要

安全分析网络过程(Saaty- anp)是层次分析法的推广。基于马尔可夫链的ANP (MC-ANP)是另一种适用于一般结构的决策方法。两种anp都使用相对测量(与比例量表配对比较)来估计有形和无形因素,使用随机矩阵(SM)来解决反馈问题,并在某些条件下获得相同的结果。Saaty-ANP没有定义基本概念,也没有检查结构的合理性,这可能导致无意义的解,忽略了反馈决策问题的一个子类。MC-ANP将备选方案从准则中分离出来,通过有向图的方式定义了准则的属性、准则、准则主导关系(cdr)和合理约束;它还将cdr表示为马尔可夫链转移图和相应的(随机)邻接矩阵,并从线性方程组中得到解。利用MC-ANP,对于第一类实际可选问题,其解是由SM的参数正左特征向量得到的可选方案的优先级;对于第二类标称可选问题,其解是由SM的非负右特征向量得到的准则的优先级。分析了排名颠倒的条件和原因;注意,等级反转不会出现在第二类问题中;本文给出了一个带反馈的秩反转ANP实例,并给出了一类问题的秩保持方法。我们讨论了MC-ANP的贡献,以及如何弥补safety - ahp /ANP的缺陷,并提出了需要进一步考虑的问题。
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Identifying and correcting the defects of the Saaty analytic hierarchy/network process: A comparative study of the Saaty analytic hierarchy/network process and the Markov chain-based analytic network process

The Saaty analytic network process (Saaty-ANP) is a generalization of the analytic hierarchy process. The Markov chain-based ANP (MC-ANP) is another decision-making approach suitable for general structures. Both ANPs use a relative measurement (paired comparisons with ratio scales) to estimate tangible and intangible factors, use a stochastic matrix (SM) to solve feedback problems and obtain the same results under some conditions. The Saaty-ANP does not define the basic concepts, nor does it check the rationality of the structure, which may lead to meaningless solutions and ignore a subclass of feedback decision problems. MC-ANP separates the alternatives from the criteria and defines the attributes, criteria, criterion dominated relations (CDRs) and reasonable constraints of the CDRs by means of digraphs; it also represents CDRs as Markov chain transition diagrams and corresponding (stochastic) adjacency matrices and obtains solutions from a system of linear equations. With the MC-ANP, for the real alternative problems (Class I), the solutions are priorities of the alternatives obtained by the parametric positive left eigenvectors of the SM, and for the nominal alternative problems (Class II), the solutions are priorities of the criteria obtained by the nonnegative right eigenvector of the SM. We analyze the conditions and causes of rank reversal; note that rank reversal does not appear in Class II problems; the study offers a rank reversal ANP example (with feedback) and presents a rank-preserving method for Class I problems. We discuss the contribution of MC-ANP, how to compensate for the defects of Saaty-AHP/ANP, and present issues that need further consideration.

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来源期刊
Operations Research Perspectives
Operations Research Perspectives Mathematics-Statistics and Probability
CiteScore
6.40
自引率
0.00%
发文量
36
审稿时长
27 days
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