With the advancements of computer architectures, the use of computational models proliferates to solve complex problems in many scientific applications such as nuclear physics and climate research. However, the potential of such models is often hindered because they tend to be computationally expensive and consequently ill-fitting for uncertainty quantification. Furthermore, they are usually not calibrated with real-time observations. We develop a computationally efficient algorithm based on variational Bayes inference (VBI) for calibration of computer models with Gaussian processes. Unfortunately, the speed and scalability of VBI diminishes when applied to the calibration framework with dependent data. To preserve the efficiency of VBI, we adopt a pairwise decomposition of the data likelihood using vine copulas that separate the information on dependence structure in data from their marginal distributions. We provide both theoretical and empirical evidence for the computational scalability of our methodology and describe all the necessary details for an efficient implementation of the proposed algorithm. We also demonstrate the opportunities given by our method for practitioners on a real data example through calibration of the Liquid Drop Model of nuclear binding energies.
翻译:随着计算机结构的进步,计算模型的使用激增,以解决许多科学应用(如核物理和气候研究)的复杂问题,如核物理和气候研究。然而,这些模型的潜力往往受到阻碍,因为它们往往在计算上费用昂贵,因而不适于不确定性的量化。此外,这些模型通常没有实时观测校准。我们根据可变贝斯推论(VBI)开发了一种计算高效的算法,用于用高西亚进程校准计算机模型。不幸的是,VBI的速度和可扩缩性在应用于依赖数据校准框架时会减少。为维护VBI的效率,我们采用了一种对称的脱钩方法,即使用藤条,将数据依赖结构的信息与其边际分布分开。我们为计算方法的可扩展性提供了理论证据和经验证据,并描述了高效实施拟议算法所需的所有细节。我们还通过校准核约束能量液流模型,为实际数据实例的从业人员展示了我们的方法所提供的机会。