Pei Sen, Tang Shaoting, Yan Shu, Jiang Shijin, Zhang Xiao, Zheng Zhiming
Key Laboratory of Mathematics, Informatics and Behavioral Semantics, Ministry of Education, and School of Mathematics and Systems Science, Beihang University, Beijing 100191, China.
Phys Rev E Stat Nonlin Soft Matter Phys. 2012 Aug;86(2 Pt 1):021909. doi: 10.1103/PhysRevE.86.021909. Epub 2012 Aug 9.
We investigate the collective dynamics of excitatory-inhibitory excitable networks in response to external stimuli. How to enhance the dynamic range, which represents the ability of networks to encode external stimuli, is crucial to many applications. We regard the system as a two-layer network (E layer and I layer) and explore the criticality and dynamic range on diverse networks. Interestingly, we find that phase transition occurs when the dominant eigenvalue of the E layer's weighted adjacency matrix is exactly 1, which is only determined by the topology of the E layer. Meanwhile, it is shown that the dynamic range is maximized at a critical state. Based on theoretical analysis, we propose an inhibitory factor for each excitatory node. We suggest that if nodes with high inhibitory factors are cut out from the I layer, the dynamic range could be further enhanced. However, because of the sparseness of networks and passive function of inhibitory nodes, the improvement is relatively small compared to the original dynamic range. Even so, this provides a strategy to enhance the dynamic range.
我们研究兴奋性 - 抑制性可兴奋网络在外部刺激下的集体动力学。如何提高动态范围,即网络编码外部刺激的能力,对许多应用至关重要。我们将该系统视为两层网络(E层和I层),并探索不同网络上的临界性和动态范围。有趣的是,我们发现当E层加权邻接矩阵的主导特征值恰好为1时会发生相变,这仅由E层的拓扑结构决定。同时,研究表明动态范围在临界状态下达到最大值。基于理论分析,我们为每个兴奋性节点提出一个抑制因子。我们建议,如果从I层中剔除具有高抑制因子的节点,动态范围可以进一步提高。然而,由于网络的稀疏性和抑制节点的被动功能,与原始动态范围相比,这种改进相对较小。即便如此,这提供了一种提高动态范围的策略。