REC 'Artificial Intelligence Systems and Neurotechnology', Yurij Gagarin State Technical University of Saratov, Polytechnicheskaja str 77, 410054, Saratov, Russia.
Faculty of Nonlinear Processes, Saratov State University, Astrakhanskaja str. 83, 410012, Saratov, Russia.
Sci Rep. 2018 Sep 14;8(1):13825. doi: 10.1038/s41598-018-32160-4.
We focus on spatially-extended networks during their transition from short-range connectivities to a scale-free structure expressed by heavy-tailed degree-distribution. In particular, a model is introduced for the generation of such graphs, which combines spatial growth and preferential attachment. In this model the transition to heterogeneous structures is always accompanied by a change in the graph's degree-degree correlation properties: while high assortativity levels characterize the dominance of short distance couplings, long-range connectivity structures are associated with small amounts of disassortativity. Our results allow to infer that a disassortative mixing is essential for establishing long-range links. We discuss also how our findings are consistent with recent experimental studies of 2-dimensional neuronal cultures.
我们关注的是空间扩展网络,它们从短程连接过渡到具有长尾度分布的无标度结构。特别是,我们引入了一个生成这样的图的模型,该模型结合了空间增长和优先连接。在这个模型中,向异质结构的转变总是伴随着图的度-度相关性质的变化:当高聚类水平表征短距离耦合的优势时,长程连接结构与少量的去聚类相关联。我们的结果表明,去聚类混合对于建立长程连接是必不可少的。我们还讨论了我们的发现如何与最近对二维神经元培养物的实验研究相一致。