Physics-constrained machine learning is emerging as an important topic in the field of machine learning for physics. One of the most significant advantages of incorporating physics constraints into machine learning methods is that the resulting model requires significantly less data to train. By incorporating physical rules into the machine learning formulation itself, the predictions are expected to be physically plausible. Gaussian process (GP) is perhaps one of the most common methods in machine learning for small datasets. In this paper, we investigate the possibility of constraining a GP formulation with monotonicity on three different material datasets, where one experimental and two computational datasets are used. The monotonic GP is compared against the regular GP, where a significant reduction in the posterior variance is observed. The monotonic GP is strictly monotonic in the interpolation regime, but in the extrapolation regime, the monotonic effect starts fading away as one goes beyond the training dataset. Imposing monotonicity on the GP comes at a small accuracy cost, compared to the regular GP. The monotonic GP is perhaps most useful in applications where data is scarce and noisy, and monotonicity is supported by strong physical evidence.
翻译:物理限制的机器学习正在成为物理学机器学习领域的一个重要主题。将物理限制纳入机器学习方法的最重要好处之一是,将物理限制纳入机器学习方法的最显著好处之一是,所产生的模型需要的数据要少得多。通过将物理规则纳入机器学习配方本身,预计预测在物理上是可信的。Gaussian过程(GP)也许是机器学习小数据集的最常见方法之一。在本文中,我们调查了在三种不同的材料数据集中以单调方式限制GP配方的可能性,这三个不同的材料数据集使用一个实验和两个计算数据集。单调GP与常规的GP相比,单调GP要比起来要少得多。单调GP与常规的GP作比较,因为常规的GP明显减少。单调的GP是完全单调制的,在内部的系统里,但外推系统里,单调效应开始随着一个超出培训数据集而消失。在GPGP上的单调制与常规GP相比,其精度成本很小。单调与普通的GPGP相比,在应用中可能是最有用的。单调的。单调,因为物理证据是稀缺和单调。