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Adaptive Self-Explication of Multiattribute Preferences

机译:多属性首选项的自适应自我表达

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The authors propose a Web-based adaptive self-explicated approach for multiattribute preference measurement (conjoint analysis) with a large number (ten or more) of attributes. The proposed approach overcomes some of the limitations of previous self-explicated approaches. The authors develop a computer-based self-explicated approach that breaks down the attribute importance question into a ranking of attributes followed by a sequence of constant-sum paired comparison questions. In the proposed approach, the questions are chosen adaptively for each respondent to maximize the information elicited from each paired comparison question. Unlike the traditional self-explicated approach, the proposed approach provides standard errors for attribute importance. In two studies involving digital cameras and laptop computers described on 12 and 14 attributes, respectively, the authors find that the ability to correctly predict validation choices of the proposed adaptive approach is substantially and significantly greater than that of adaptive conjoint analysis, the fast polyhedral method, and the traditional self-explicated approach. In addition, the adaptive self-explicated approach yields a significantly higher predictive validity than a nonadaptive fractional factorial constant-sum paired comparison design.
机译:作者提出了一种基于Web的自适应自我展示方法,用于具有大量(十个或更多)属性的多属性偏好测量(联合分析)。所提出的方法克服了以前自我阐明方法的某些局限性。作者开发了一种基于计算机的自我解释方法,该方法将属性重要性问题分解为属性等级,然后是一系列恒定和的成对比较问题。在提出的方法中,针对每个受访者自适应地选择问题,以最大化从每个配对的比较问题中得出的信息。与传统的自我解释方法不同,该方法为属性重要性提供了标准错误。在分别涉及12和14个属性的两项涉及数码相机和便携式计算机的研究中,作者发现,正确预测所提出的自适应方法的验证选择的能力比快速多面体方法自适应联合分析的能力显着更大。 ,以及传统的自我展示方法。此外,与非自适应分数阶因子常数和配对设计相比,自适应自我表达方法的预测效用明显更高。

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