While extracting information from data with machine learning plays an increasingly important role, physical laws and other first principles continue to provide critical insights about systems and processes of interest in science and engineering. This work introduces a method that infers models from data with physical insights encoded in the form of structure and that minimizes the model order so that the training data are fitted well while redundant degrees of freedom without conditions and sufficient data to fix them are automatically eliminated. The models are formulated via solution matrices of specific instances of generalized Sylvester equations that enforce interpolation of the training data and relate the model order to the rank of the solution matrices. The proposed method numerically solves the Sylvester equations for minimal-rank solutions and so obtains models of low order. Numerical experiments demonstrate that the combination of structure preservation and rank minimization leads to accurate models with orders of magnitude fewer degrees of freedom than models of comparable prediction quality that are learned with structure preservation alone.
翻译:在从机器学习的数据中提取信息的同时,物理法和其他首要原则继续对科学和工程方面感兴趣的系统和过程提供至关重要的洞察力,这项工作采用了一种方法,从结构形式的物理洞察数据中推断出模型,并将示范命令降到最低,这样就可以使培训数据适应良好,同时不附带条件地自动消除冗余的自由度和用于修补这些自由的足够数据;这些模型是通过执行培训数据内插的通用Sylvester方程式具体实例的解决方案矩阵编制而成的,并将模型顺序与解决方案矩阵的等级联系起来;拟议的方法从数字上解决了Sylvester方程式的最小级解决方案,从而获得了低级的模型;数字实验表明,结构保护与排级的组合导致精确模型,其自由程度小于仅通过结构保护学习的可比预测质量模型。