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Comparing MCDA Aggregation Methods in Constructing Composite Indicators Using the Shannon-Spearman Measure

机译:使用Shannon-Spearman测度在构建综合指标中比较MCDA聚合方法

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摘要

Composite indicators have been increasingly recognized as a useful tool for performance monitoring, benchmarking comparisons and public communication in a wide range of fields. The usefulness of a composite indicator depends heavily on the underlying data aggregation scheme where multiple criteria decision analysis (MCDA) is commonly used. A problem in this application is the determination of an appropriate MCDA aggregation method. Of the many criteria for comparing MCDA methods, the Shannon-Spearman measure (SSM) is one that compares alternative MCDA aggregation methods in constructing composite indicators based on the information loss concept. This paper assesses the effectiveness of the SSM using Monte Carlo approach-based uncertain analysis and variance-based sensitivity analysis techniques. It is found that most of the variation in the SSM arises from the uncertainty in choosing an aggregation method. Therefore, the SSM can be considered as an effective measure for comparing MCDA aggregation methods in constructing composite indicators. We also use the SSM to evaluate five MCDA aggregation methods in constructing composite indicators and present the findings.
机译:复合指标已被越来越多地视为绩效监控,基准比较和公共沟通的有用工具。综合指标的有用性在很大程度上取决于基础数据聚合方案,在该方案中通常使用多准则决策分析(MCDA)。该应用中的问题是确定合适的MCDA聚合方法。在比较MCDA方法的许多标准中,Shannon-Spearman测度(SSM)是一种在信息丢失概念的基础上比较替代MCDA聚合方法来构建复合指标的一种方法。本文使用基于蒙特卡洛方法的不确定性分析和基于方差的敏感性分析技术评估了SSM的有效性。发现SSM的大部分变化是由于选择聚合方法时的不确定性引起的。因此,可以将SSM视为比较MCDA聚合方法在构建综合指标中的有效措施。我们还使用SSM在构建复合指标时评估了五种MCDA聚合方法,并提出了发现。

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