Data-Driven Approach with Machine Learning to Reduce Subjectivity in Multi-Attribute Decision Making Methods

Mohammadreza Torkjazi, Ali K. Raz
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引用次数: 1

Abstract

Multi-Attribute Decision Making (MADM) methods are an integral component of trade-off studies which are frequently employed in Systems Engineering when multiple interdependent decision criteria are involved. In MADM methods, each decision criterion is assigned a weight based on how important it is to the Decision-Makers (DMs), and a decision matrix is populated with values representing assessments of each alternative with respect to the decision criteria. MADM methods, therefore, are susceptible to subjectivity due to inherent bias in DM’s preferences where slight fluctuation in stated DM’s preference can drastically impact the outcome. In this paper, we propose a data-driven methodology with Machine Learning to improve the effectiveness of MADM methods by reducing DMs’ subjective biases resulting from criteria weights. In addition, the proposed methodology leverages Exploratory Data Analysis to better determine the type of criteria as cost or benefit, depending upon whether it positively or negatively affects the MADM outcome. A sample trade study example of selecting a metropolitan area based on housing affordability is provided to illustrate how the proposed method is applied to generate data-based true criteria weights and types.
基于数据驱动的机器学习方法减少多属性决策方法中的主观性
多属性决策(MADM)方法是权衡研究的一个重要组成部分,在系统工程中涉及多个相互依赖的决策准则时经常被使用。在MADM方法中,每个决策标准根据其对决策者(DMs)的重要程度被分配一个权重,并且决策矩阵中填充了表示每个备选方案相对于决策标准的评估的值。因此,由于DM偏好的固有偏差,MADM方法容易受到主观性的影响,其中所述DM偏好的轻微波动可能会极大地影响结果。在本文中,我们提出了一种数据驱动的机器学习方法,通过减少由标准权重引起的dm主观偏差来提高MADM方法的有效性。此外,拟议的方法利用探索性数据分析来更好地确定成本或收益标准的类型,这取决于它对MADM结果的影响是积极的还是消极的。提供了一个基于住房负担能力选择大都市地区的贸易研究示例,以说明如何应用所建议的方法来产生基于数据的真实标准权重和类型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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