Effect of network architecture on burst and spike synchronization in a scale-free network of bursting neurons.

Journal: Neural networks : the official journal of the International Neural Network Society
Published Date:

Abstract

We investigate the effect of network architecture on burst and spike synchronization in a directed scale-free network (SFN) of bursting neurons, evolved via two independent α- and β-processes. The α-process corresponds to a directed version of the Barabási-Albert SFN model with growth and preferential attachment, while for the β-process only preferential attachments between pre-existing nodes are made without addition of new nodes. We first consider the "pure" α-process of symmetric preferential attachment (with the same in- and out-degrees), and study emergence of burst and spike synchronization by varying the coupling strength J and the noise intensity D for a fixed attachment degree. Characterizations of burst and spike synchronization are also made by employing realistic order parameters and statistical-mechanical measures. Next, we choose appropriate values of J and D where only burst synchronization occurs, and investigate the effect of the scale-free connectivity on the burst synchronization by varying (1) the symmetric attachment degree and (2) the asymmetry parameter (representing deviation from the symmetric case) in the α-process, and (3) the occurrence probability of the β-process. In all these three cases, changes in the type and the degree of population synchronization are studied in connection with the network topology such as the degree distribution, the average path length Lp, and the betweenness centralization Bc. It is thus found that just taking into consideration Lp and Bc (affecting global communication between nodes) is not sufficient to understand emergence of population synchronization in SFNs, but in addition to them, the in-degree distribution (affecting individual dynamics) must also be considered to fully understand for the effective population synchronization.

Authors

  • Sang-Yoon Kim
    Institute for Computational Neuroscience and Department of Science Education, Daegu National University of Education, Daegu 705-115, Republic of Korea. Electronic address: sykim@icn.re.kr.
  • Woochang Lim
    Institute for Computational Neuroscience and Department of Science Education, Daegu National University of Education, Daegu 705-115, Republic of Korea. Electronic address: wclim@icn.re.kr.