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A novel perception-based DEA method to evaluate alternatives in uncertain online environments

机译:一种基于感知的新型DEA方法,用于评估不确定的在线环境中的替代方案

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摘要

Consider a decision maker (DM) who must rank a set of alternatives and select one of them when searching online using a recommender engine such as Amazon or TripAdvisor. These websites provide numerical and linguistic reviews of the available alternatives offered by groups of unknown raters. The evaluations assigned by the raters to the characteristics of the different alternatives may or may not coincide with the evaluations that would be assigned by the DM if he were to actually observe the alternative. Hence, the value assigned by the DM to a characteristic must account for the uncertainty regarding the distribution of its realizations, the frictions inherent to the evaluations of the raters and the subjective quality of the perception determining his own evaluation. We formalize the incentives of the DM to select an alternative using a value function that incorporates these sources of uncertainty within a multi-criteria decision making environment. In addition, we implement this perception-based evaluation scenario within a data envelopment analysis (DEA) framework in order to study numerically the effects that perception differentials have on the ranking and selection behavior of the DM.
机译:考虑一个决策者(DM),当使用推荐引擎(例如Amazon或TripAdvisor)在线搜索时,他们必须对一组备选方案进行排名并选择其中一种。这些网站提供了由未知评分者群体提供的可用替代方案的数字和语言评论。如果评估员要实际观察替代方案,则评估者对不同替代方案的特征进行的评估可能与DM所评估的结果一致,也可能不一致。因此,DM分配给特征的值必须考虑到有关其实现分布的不确定性,评估者评估所固有的摩擦以及确定其评估的感知的主观质量。我们将DM的激励机制形式化,使其使用价值函数来选择替代方案,该函数将这些不确定性来源纳入多标准决策环境中。此外,我们在数据包络分析(DEA)框架内实现了这种基于感知的评估方案,以便从数字上研究感知差异对DM的排名和选择行为的影响。

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