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On modeling dynamic priorities in the analytic hierarchy process using compositional data analysis

机译:关于使用构成数据分析的层次结构分析中的动态优先级建模

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摘要

In a rapidly changing environment, the priorities derived using the analytic hierarchy process (AHP) approach at one point in time might very likely change in the near future. Thus, in order to adapt to such ever-changing environment, it is of primary importance to be able to follow the change over time as to enable the system to respond differently and continuously over time of its operation. This paper proposes the use of a time-based compositional forecasting method, which is based on the idea of exponential smoothing, to deal with the AHP priority dynamics. The proposed method is particularly useful when there is a limited number of historical data, and might be considered to be more effective and time-efficient compared to that of multivariate time series method. It was also shown that the proposed method provides much greater adaptability in modeling the AHP priorities change over time compared to that of recently developed methods in compositional data research field. The shortcoming of Saaty's dynamic judgment approach and some limitations of the other existing methods will be discussed. Finally, to substantiate the validity of the proposed method and to give some practical insights, an illustrative case study is provided. (C) 2008 Elsevier B.V. All rights reserved.
机译:在快速变化的环境中,使用分析层次结构过程(AHP)方法得出的优先级可能会在不久的将来发生变化。因此,为了适应这种不断变化的环境,最重要的是能够随时间变化而变化,以使系统能够随着其运行时间而不断地做出不同的响应。本文提出了一种基于时间的成分预测方法,该方法基于指数平滑的思想来处理AHP优先级动态。当历史数据数量有限时,建议的方法特别有用,并且与多元时间序列方法相比,该方法可能被认为更加有效和省时。还表明,与最近在成分数据研究领域中开发的方法相比,该方法在建模AHP优先级随时间变化方面具有更大的适应性。将讨论Saaty动态判断方法的缺点以及其他现有方法的局限性。最后,为证实所提出方法的有效性并给出一些实际见解,本文提供了一个示例性案例研究。 (C)2008 Elsevier B.V.保留所有权利。

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