Department of Computer and Information Science, Norwegian University of Science and Technology, Trondheim, Norway.
Artif Life. 2011 Winter;17(1):33-50. doi: 10.1162/artl_a_00016. Epub 2010 Nov 18.
We study the selective advantage of modularity in artificially evolved networks. Modularity abounds in complex systems in the real world. However, experimental evidence for the selective advantage of network modularity has been elusive unless it has been supported or mandated by the genetic representation. The evolutionary origin of modularity is thus still debated: whether networks are modular because of the process that created them, or the process has evolved to produce modular networks. It is commonly argued that network modularity is beneficial under noisy conditions, but experimental support for this is still very limited. In this article, we evolve nonlinear artificial neural network classifiers for a binary classification task with a modular structure. When noise is added to the edge weights of the networks, modular network topologies evolve, even without representational support.
我们研究了模块化在人工进化网络中的选择优势。模块化在现实世界中的复杂系统中大量存在。然而,除非遗传表示形式支持或规定了网络模块化的选择优势,否则很难获得实验证据。因此,模块化的进化起源仍然存在争议:网络是否因为创建它们的过程而具有模块化,或者该过程已经进化为产生模块化网络。人们普遍认为,在噪声条件下网络模块化是有益的,但对此的实验支持仍然非常有限。在本文中,我们针对具有模块化结构的二进制分类任务进化非线性人工神经网络分类器。当向网络的边权重添加噪声时,即使没有表示支持,模块化网络拓扑也会进化。