In this paper, we provide sufficient conditions for dissipativity and local asymptotic stability of discrete-time dynamical systems parametrized by deep neural networks. We leverage the representation of neural networks as pointwise affine maps, thus exposing their local linear operators and making them accessible to classical system analytic and design methods. This allows us to "crack open the black box" of the neural dynamical system's behavior by evaluating their dissipativity, and estimating their stationary points and state-space partitioning. We relate the norms of these local linear operators to the energy stored in the dissipative system with supply rates represented by their aggregate bias terms. Empirically, we analyze the variance in dynamical behavior and eigenvalue spectra of these local linear operators with varying weight factorizations, activation functions, bias terms, and depths.
翻译:在本文中,我们为由深神经网络合成的离散时间动态系统失能和局部无症状稳定性提供了充分的条件。我们利用神经网络的表示方式作为尖锐的线性图,从而暴露了它们当地的线性操作者,使它们可以进入古典系统分析和设计方法。这使我们能够通过评估神经动态系统失能和估计其固定点和状态空间分隔来“打开其行为的黑盒 ” 。我们将这些地方线性操作者的规范与分散系统中储存的能量及其总体偏差条件所代表的供给率联系起来。我们经常地分析这些地方线性操作者动态行为和超值光值光谱的差异,其重量系数、激活功能、偏差条件和深度各不相同。