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Comparing methods for multiattribute decision making with ordinal weights

机译:序数权重的多属性决策比较方法

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This paper is concerned with procedures for ranking discrete alternatives when their values are evaluated precisely on multiple attributes and the attribute weights are known only to obey ordinal relations. There are a variety of situations where it is reasonable to use ranked weights, and there have been various techniques developed to deal with ranked weights and arrive at a choice or rank alternatives under consideration. The most common approach is to determine a set of approximate weights (e.g., rank-order centroid weights) from the ranked weights. This paper presents a different approach that does not develop approximate weights, but rather uses information about the intensity of dominance that is demonstrated by each alternative. Under this approach, several different, intuitively plausible, procedures are presented, so it may be interesting to investigate their performance. These new procedures are then compared against existing procedures using a simulation study. The simulation result shows that the approximate weighting approach yields more accurate results in terms of identifying the best alternatives and the overall rank of alternatives. Although the quality of the new procedures appears to be less accurate when using ranked weights, they provide a complete capability of dealing with arbitrary linear inequalities that signify possible imprecise information on weights, including mixtures of ordinal and bounded weights.
机译:当离散值在多个属性上精确评估并且属性权重仅服从顺序关系时,本文涉及对离散值进行排序的过程。在许多情况下,使用排名权重是合理的,并且已经开发了各种技术来处理排名权重并得出正在考虑的选择或排名替代项。最常见的方法是从排名的权重中确定一组近似的权重(例如,排名重心权重)。本文提出了一种不同的方法,该方法不会产生近似的权重,而是使用每个替代方案都可以证明的关于优势强度的信息。在这种方法下,提出了几种不同的,直观上可行的程序,因此研究它们的性能可能很有趣。然后使用模拟算例将这些新程序与现有程序进行比较。仿真结果表明,在确定最佳替代方案和替代方案的总体排名方面,近似加权方法可得出更准确的结果。尽管使用分级权重时新程序的质量似乎不太准确,但是它们提供了处理任意线性不等式的完整功能,这些线性不等式意味着可能存在的不精确的权重信息,包括序数和有界权重的混合。

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