首页> 外文期刊>Applied mathematics and computation >An eigenvector method for generating normalized interval and fuzzy weights
【24h】

An eigenvector method for generating normalized interval and fuzzy weights

机译:生成归一化间隔和模糊权重的特征向量方法

获取原文
获取原文并翻译 | 示例
           

摘要

Crisp comparison matrices produce crisp weight estimates. It is logical for an interval or fuzzy comparison matrix to give an interval or fuzzy weight estimate. In this paper, an eigenvector method (EM) is proposed to generate interval or fuzzy weight estimate from an interval or fuzzy comparison matrix, which differs from Csutora and Buckley's Lambda-Max method in several aspects. First, the proposed EM produces a normalized interval or fuzzy eigenvector weight estimate through the solution of a linear programming model, while the Lambda-Max method gives a series of nonnormalized interval eigenvector weight estimate through an iterative solution process. Next, the EM directly solves the principal right eigenvector of an interval or fuzzy comparison matrix, while the Lambda-Max method needs transforming a fuzzy comparison matrix into a series of interval comparison matrices using a-level sets and the extension principle and therefore needs the solution of a series of eigenvalue problems. Finally, the Lambda-Max method needs the help of the principal right eigenvector of a crisp comparison matrix to determine the final interval weights, while the EM has no such requirement. It is also found that not all interval or fuzzy comparison matrices can generate normalized interval or fuzzy eigenvector weights. Situations where the EM is inapplicable are analyzed and the aggregation of local interval or fuzzy weights into global interval or fuzzy weights is also discussed. Three numerical examples including a hierarchical structure decision-making problem are examined using the EM to demonstrate its applications. (c) 2006 Elsevier Inc. All rights reserved.
机译:酥脆的比较矩阵可得出清晰的重量估算值。区间或模糊比较矩阵给出区间或模糊权重估计是合乎逻辑的。本文提出了一种特征向量法(EM),用于从区间或模糊比较矩阵中生成区间或模糊权重估计,这在某些方面与Csutora和Buckley的Lambda-Max方法有所不同。首先,所提出的EM通过线性规划模型的解产生归一化间隔或模糊特征向量权重估计,而Lambda-Max方法通过迭代解过程给出一系列非归一化区间本征向量权重估计。接下来,EM直接求解区间或模糊比较矩阵的本征本征向量,而Lambda-Max方法则需要使用a-level集和扩展原理将模糊比较矩阵转换为一系列区间比较矩阵,因此需要解决一系列特征值问题。最后,Lambda-Max方法需要清晰的比较矩阵的主右特征向量来确定最终区间权重,而EM没有此要求。还发现并非所有区间或模糊比较矩阵都可以生成归一化区间或模糊特征向量权重。分析了EM不适用的情况,并讨论了局部区间或模糊权重向全局区间或模糊权重的聚合。使用EM检查了三个数值示例,其中包括分层结构决策问题,以演示其应用。 (c)2006 Elsevier Inc.保留所有权利。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号