Zambra Matteo, Maritan Amos, Testolin Alberto
Department of Civil, Environmental and Architectural Engineering, University of Padova, Via Marzolo 9, 35131 Padova, Italy.
Department of Physics and Astronomy, University of Padova; Istituto Nazionale di Fisica Nucleare-Sezione di Padova, Via Marzolo 8, 35131 Padova, Italy.
Entropy (Basel). 2020 Feb 11;22(2):204. doi: 10.3390/e22020204.
Network science can offer fundamental insights into the structural and functional properties of complex systems. For example, it is widely known that neuronal circuits tend to organize into basic functional topological modules, called network motifs. In this article, we show that network science tools can be successfully applied also to the study of artificial neural networks operating according to self-organizing (learning) principles. In particular, we study the emergence of network motifs in multi-layer perceptrons, whose initial connectivity is defined as a stack of fully-connected, bipartite graphs. Simulations show that the final network topology is shaped by learning dynamics, but can be strongly biased by choosing appropriate weight initialization schemes. Overall, our results suggest that non-trivial initialization strategies can make learning more effective by promoting the development of useful network motifs, which are often surprisingly consistent with those observed in general transduction networks.
网络科学能够为复杂系统的结构和功能特性提供基本见解。例如,众所周知,神经元回路倾向于组织成基本的功能拓扑模块,即所谓的网络基序。在本文中,我们表明网络科学工具也可以成功应用于根据自组织(学习)原理运行的人工神经网络的研究。具体而言,我们研究了多层感知器中网络基序的出现情况,其初始连接性被定义为一堆完全连接的二分图。模拟结果表明,最终的网络拓扑结构由学习动态塑造,但通过选择合适的权重初始化方案可能会受到强烈影响。总体而言,我们的结果表明,非平凡的初始化策略可以通过促进有用网络基序的发展使学习更有效,这些网络基序通常与在一般转导网络中观察到的基序惊人地一致。