Gaussian process regression is a popular Bayesian framework for surrogate modeling of expensive data sources. As part of a broader effort in scientific machine learning, many recent works have incorporated physical constraints or other a priori information within Gaussian process regression to supplement limited data and regularize the behavior of the model. We provide an overview and survey of several classes of Gaussian process constraints, including positivity or bound constraints, monotonicity and convexity constraints, differential equation constraints provided by linear PDEs, and boundary condition constraints. We compare the strategies behind each approach as well as the differences in implementation, concluding with a discussion of the computational challenges introduced by constraints.
翻译:Gaussian 进程回归是一个受欢迎的代用昂贵数据源模型的贝耶斯框架,作为科学机器学习更广泛努力的一部分,许多近期工程在高斯进程回归中包括了物理限制或其他先验信息,以补充有限数据并使模型行为规范化。我们概述和调查了高斯进程的若干类别制约,包括现实或约束制约、单调和混凝土制约、线性PDE提供的不同方程式制约以及边界条件制约。我们比较了每一种方法背后的战略以及执行中的差异,最后讨论了限制带来的计算挑战。