We study the approximation of functions which are invariant with respect to certain permutations of the input indices using flow maps of dynamical systems. Such invariant functions includes the much studied translation-invariant ones involving image tasks, but also encompasses many permutation-invariant functions that finds emerging applications in science and engineering. We prove sufficient conditions for universal approximation of these functions by a controlled equivariant dynamical system, which can be viewed as a general abstraction of deep residual networks with symmetry constraints. These results not only imply the universal approximation for a variety of commonly employed neural network architectures for symmetric function approximation, but also guide the design of architectures with approximation guarantees for applications involving new symmetry requirements.
翻译:我们利用动态系统的流程图研究投入指数某些变异功能的近似值,这些变异性功能包括大量研究过的涉及图像任务的翻译变异功能,但也包括许多在科学和工程中发现新兴应用的变异性功能。我们证明有足够的条件,可以通过一个受控的等异动态系统将这些功能普遍近似,这个系统可以被视为具有对称限制的深海残余网络的一般抽象。 这些结果不仅意味着对称功能近似值的各种常用神经网络结构的普遍近似值,而且还指导结构的设计,为涉及新对称要求的应用提供近似保证。