The paper covers the design and analysis of experiments to discriminate between two Gaussian process models, such as those widely used in computer experiments, kriging, sensor location and machine learning. Two frameworks are considered. First, we study sequential constructions, where successive design (observation) points are selected, either as additional points to an existing design or from the beginning of observation. The selection relies on the maximisation of the difference between the symmetric Kullback Leibler divergences for the two models, which depends on the observations, or on the mean squared error of both models, which does not. Then, we consider static criteria, such as the familiar log-likelihood ratios and the Fr\'echet distance between the covariance functions of the two models. Other distance-based criteria, simpler to compute than previous ones, are also introduced, for which, considering the framework of approximate design, a necessary condition for the optimality of a design measure is provided. The paper includes a study of the mathematical links between different criteria and numerical illustrations are provided.
翻译:本文涵盖两个高斯进程模型(例如计算机实验、Kriging、传感器位置和机器学习中广泛使用的模型)之间差别的实验设计和分析。 考虑了两个框架。 首先, 我们研究顺序构造, 选择连续的设计(观察)点, 作为现有设计的额外点, 或者从观察开始。 选择取决于两个模型对称的Kwillback Leibelr差异之间的最大差异, 取决于观察结果, 或者取决于两个模型的平均平方差, 而这两个模型没有。 然后, 我们考虑静态标准, 如熟悉的日志相似率和两种模型的共变函数之间的Fr\'echet距离。 还引入了其他更简单的远程标准, 比以前的标准更简单, 并且考虑到近似设计框架, 提供了设计措施最佳性的必要条件。 文件包括不同标准和数字插图之间的数学联系研究。