Measure-preserving neural networks are well-developed invertible models, however, their approximation capabilities remain unexplored. This paper rigorously analyses the approximation capabilities of existing measure-preserving neural networks including NICE and RevNets. It is shown that for compact $U \subset \R^D$ with $D\geq 2$, the measure-preserving neural networks are able to approximate arbitrary measure-preserving map $\psi: U\to \R^D$ which is bounded and injective in the $L^p$-norm. In particular, any continuously differentiable injective map with $\pm 1$ determinant of Jacobian are measure-preserving, thus can be approximated.
翻译:测量-保存神经网络是十分发达的不可逆模型,但是,它们的近似能力仍未开发出来。本文严格分析现有测量-保存神经网络的近似能力,包括NICE和RevNets。 事实证明,对于使用$D\Geq 2美元的常规 US\ subset\ R ⁇ D$, 测量-保护神经网络能够接近任意测量-保存地图$\psi:U\to\R ⁇ D$, 该地图在$L ⁇ p$-norm中是约束和输入的。 特别是, 任何持续差异且具有1美元的Jacobian决定因素的测量图都是量控的, 因此可以近似。