Computer models, also known as simulators, can be computationally expensive to run, and for this reason statistical surrogates, known as emulators, are often used. Any statistical model, including an emulator, should be validated before being used, otherwise resulting decisions can be misguided. We discuss how current methods for validating Gaussian process emulators of deterministic models are insufficient for emulators of stochastic computer models and develop a framework for diagnosing problems in stochastic emulators. These diagnostics are based on independently validating the mean and variance predictions using out-of-sample, replicated, simulator runs. We then also use a building performance simulator as a case study example.
翻译:计算机模型(又称模拟器)在计算上可能非常昂贵,因此经常使用统计代孕器(又称模拟器),任何统计模型(包括模拟器)在使用前都应验证,否则由此产生的决定就会被误导。我们讨论目前验证确定模型高萨过程模拟器的方法如何不足以模拟随机计算机模型,并开发诊断随机模拟器问题的框架。这些诊断基于利用模拟、复制、模拟运行的外标独立验证平均值和差异预测。然后我们用建筑性能模拟器作为案例研究的例子。