Construction of Saturated D-optimal Designs for Mixture Experiments with a Non Normal Response using an Algorithmic Search

Rahul Banerjee, Seema Jaggi, Eldho Varghese, Arpan Bhowmik, Cini Varghese, Anindita Datta, Shwetank Lall
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Abstract

Background: Mixture experiments belong to the response surface design category, involving the combination of multiple components to create a product. These products are commonly encountered in daily life. In some cases, mixture experiments yield qualitative responses, such as taste in a fruit punch. Qualitative variables often deviate from a normal distribution. Methods: To address non-normal responses, a generalized linear model, specifically the logistic model, is employed. This study utilizes logistic models and develops suitable search algorithms to obtain saturated D-optimal designs for mixture experiments. The validation of D-optimality criteria is based on the General Equivalence Theorem. Result: For generating locally D-optimal designs, the logistic model is utilized considering non-normally distributed errors. While the procedure remains the same for other nonlinear models, the assumptions regarding error distribution impact the Fisher information matrix (FIM).
用算法搜索构建非正态响应混合试验的饱和d -最优设计
背景:混合实验属于响应面设计的范畴,涉及多个组件的组合,以创造一个产品。这些产品在日常生活中很常见。在某些情况下,混合实验产生定性反应,如水果潘趣酒的味道。定性变量经常偏离正态分布。方法:为了解决非正态响应,一个广义的线性模型,特别是逻辑模型,被采用。本研究利用逻辑模型并开发合适的搜索算法来获得混合实验的饱和d -最优设计。d -最优性准则的验证是基于一般等价定理的。结果:考虑非正态分布误差,采用logistic模型生成局部d -最优设计。虽然对于其他非线性模型的过程保持相同,但关于误差分布的假设影响Fisher信息矩阵(FIM)。
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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