Optimal Product Design by Sequential Experiments in High Dimensions

Mingyu Joo, Michael L. Thompson, Greg M. Allenby
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引用次数: 10

Abstract

The identification of the optimal design of products and packaging is challenged when attributes and their levels interact. Firms recognize this by testing prototypes prior to launch, where the effects of interactions are revealed in the head-to-head comparison of a small number of finalists. A difficulty in conducting analysis for design is dealing with the high dimensionality of the design space. We propose an experimental criteria for sequentially searching for the most preferred design concept, and incorporate a stochastic search variable selection method to selectively estimate relevant interactions among the attributes. A validation experiment confirms that our proposed method leads to improved design concepts in a high-dimensional space compared to alternative methods.
基于高维序贯实验的产品优化设计
当属性和它们的层次相互作用时,产品和包装的最佳设计的识别受到挑战。公司通过在发布前测试原型来认识到这一点,其中互动的影响在少数决赛选手的正面比较中得到揭示。设计分析的难点在于如何处理设计空间的高维性。我们提出了一个顺序搜索最优选设计概念的实验准则,并结合随机搜索变量选择方法来选择性地估计属性之间的相关相互作用。验证实验证实,与其他方法相比,我们提出的方法可以在高维空间中改进设计概念。
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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