论文标题
数据驱动的Green功能的发现
Data-driven discovery of Green's functions
论文作者
论文摘要
发现隐藏的部分微分方程(PDE)和数据运算符是机器学习和数值分析之间的边界的重要主题。该博士学位论文介绍了理论结果和深度学习算法,以学习与线性偏微分方程相关的Green功能,并严格证明PDE学习技术是合理的。得出了一种理论上严格的算法以获得学习率,该算法的特征是近似学习与椭圆PDES相关的Green功能所需的训练数据量。该结构通过将随机的奇异值分解扩展到非标准的高斯矢量和Hilbert-schmidt操作员,并利用使用层次矩阵来利用绿色函数的低层次层次结构,将PDE学习和数值线性代数的领域连接起来。引入了理性神经网络(NNS),并由具有可训练的理性激活功能的神经网络组成。这些网络的高度组成结构,结合有理近似理论,意味着有理函数具有比标准激活函数更高的近似功率。此外,有理NNS可能具有极点并任意较大的值,这是近似具有奇异性函数(例如Green功能)的理想选择。最后,将有关格林功能和理性NNS的理论结果组合在一起,以设计一种可以从数据中发现Green的功能的人类理解的深度学习方法。这种方法可以补充最先进的PDE学习技术,因为可以从学到的绿色功能(例如主要的模式,对称性和奇异位置)中捕获广泛的物理学。
Discovering hidden partial differential equations (PDEs) and operators from data is an important topic at the frontier between machine learning and numerical analysis. This doctoral thesis introduces theoretical results and deep learning algorithms to learn Green's functions associated with linear partial differential equations and rigorously justify PDE learning techniques. A theoretically rigorous algorithm is derived to obtain a learning rate, which characterizes the amount of training data needed to approximately learn Green's functions associated with elliptic PDEs. The construction connects the fields of PDE learning and numerical linear algebra by extending the randomized singular value decomposition to non-standard Gaussian vectors and Hilbert--Schmidt operators, and exploiting the low-rank hierarchical structure of Green's functions using hierarchical matrices. Rational neural networks (NNs) are introduced and consist of neural networks with trainable rational activation functions. The highly compositional structure of these networks, combined with rational approximation theory, implies that rational functions have higher approximation power than standard activation functions. In addition, rational NNs may have poles and take arbitrarily large values, which is ideal for approximating functions with singularities such as Green's functions. Finally, theoretical results on Green's functions and rational NNs are combined to design a human-understandable deep learning method for discovering Green's functions from data. This approach complements state-of-the-art PDE learning techniques, as a wide range of physics can be captured from the learned Green's functions such as dominant modes, symmetries, and singularity locations.