The conventional approach to Bayesian decision-theoretic experiment design involves searching over possible experiments to select a design that maximizes the expected value of a specified utility function. The expectation is over the joint distribution of all unknown variables implied by the statistical model that will be used to analyze the collected data. The utility function defines the objective of the experiment where a common utility function is the information gain. This article introduces an expanded framework for this process, where we go beyond the traditional Expected Information Gain criteria and introduce the Expected General Information Gain which measures robustness to the model discrepancy and Expected Discriminatory Information as a criterion to quantify how well an experiment can detect model discrepancy. The functionality of the framework is showcased through its application to a scenario involving a linearized spring mass damper system and an F-16 model where the model discrepancy is taken into account while doing Bayesian optimal experiment design.
翻译:传统的贝叶斯决策论实验设计方法是在可能的实验中搜索,以选择最大化指定效用函数期望值的设计。期望值是指由收集到的数据所确定的所有未知变量的联合分布。效用函数定义实验的目标,其中一个常见的效用函数是信息增益。本文介绍了一个扩展框架,超越了传统的期望信息增益准则,并引入了期望广义信息增益作为度量模型误差鲁棒性的标准,以及期望区别性信息作为量化实验在检测模型误差方面能力的准则。通过将模型误差纳入贝叶斯最优实验设计,展示了该框架的功能性——例如在线性化弹簧质量阻尼器系统和F-16模型中的应用。