Systems with both quantitative and qualitative responses are widely encountered in many applications. Design of experiment methods are needed when experiments are conducted to study such systems. Classic experimental design methods are unsuitable here because they often focus on one type of response. In this paper, we develop a Bayesian D-optimal design method for experiments with one continuous and one binary response. Both noninformative and conjugate informative prior distributions on the unknown parameters are considered. The proposed design criterion has meaningful interpretations regarding the D-optimality for the models for both types of responses. An efficient point-exchange search algorithm is developed to construct the local D-optimal designs for given parameter values. Global D-optimal designs are obtained by accumulating the frequencies of the design points in local D-optimal designs, where the parameters are sampled from the prior distributions. The performances of the proposed methods are evaluated through two examples.
翻译:在许多应用中,具有定量和定性响应的系统被广泛遇到。当进行实验研究这种系统时,需要实验设计方法。在这里,经典实验设计方法不适用,因为它们通常专注于一种响应类型。本文提出了一种基于贝叶斯最优化的设计方法,适用于具有一个连续和一个二进制响应的实验。考虑了未知参数的非信息和共轭信息先验分布。所提出的设计准则对于两种响应类型的模型都具有意义上的D-最优性。开发了一种高效的点交换搜索算法,用于构建给定参数值的局部D-最优设计。全局D-最优设计通过在局部D-最优设计中累积设计点的频率来获得,其中从先验分布中抽样参数。所提方法的性能通过两个示例进行评估。