Curto Carina, Geneson Jesse, Morrison Katherine
Department of Mathematics, The Pennsylvania State University, University Park, PA 16802, U.S.A.
School of Mathematical Sciences, University of Northern Colorado, Greeley, CO 80639, U.S.A.
Neural Comput. 2019 Jan;31(1):94-155. doi: 10.1162/neco_a_01151. Epub 2018 Nov 21.
Threshold-linear networks (TLNs) are models of neural networks that consist of simple, perceptron-like neurons and exhibit nonlinear dynamics determined by the network's connectivity. The fixed points of a TLN, including both stable and unstable equilibria, play a critical role in shaping its emergent dynamics. In this work, we provide two novel characterizations for the set of fixed points of a competitive TLN: the first is in terms of a simple sign condition, while the second relies on the concept of domination. We apply these results to a special family of TLNs, called combinatorial threshold-linear networks (CTLNs), whose connectivity matrices are defined from directed graphs. This leads us to prove a series of graph rules that enable one to determine fixed points of a CTLN by analyzing the underlying graph. In addition, we study larger networks composed of smaller building block subnetworks and prove several theorems relating the fixed points of the full network to those of its components. Our results provide the foundation for a kind of graphical calculus to infer features of the dynamics from a network's connectivity.
阈值线性网络(TLNs)是一种神经网络模型,由简单的、类似感知机的神经元组成,并表现出由网络连接性决定的非线性动力学。TLN的不动点,包括稳定和不稳定平衡点,在塑造其涌现动力学方面起着关键作用。在这项工作中,我们为竞争型TLN的不动点集提供了两种新颖的表征:第一种是基于一个简单的符号条件,而第二种依赖于支配的概念。我们将这些结果应用于一类特殊的TLN,称为组合阈值线性网络(CTLNs),其连接矩阵由有向图定义。这使我们能够证明一系列图规则,通过分析底层图来确定CTLN的不动点。此外,我们研究了由较小的构建块子网组成的更大网络,并证明了几个定理,将全网络的不动点与其组件的不动点联系起来。我们的结果为一种图形演算提供了基础,以便从网络连接性推断动力学特征。