Small-worldness favours network inference

R. Garc'ia, Arturo C. Mart'i, C. Cabeza, N. Rubido
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Abstract

A main goal in the analysis of a complex system is to infer its underlying network structure from time-series observations of its behaviour. The inference process is often done by using bi-variate similarity measures, such as the cross-correlation (CC), however, the main factors favouring or hindering its success are still puzzling. Here, we use synthetic neuron models in order to reveal the main topological properties that frustrate or facilitate inferring the underlying network from CC measurements. Specifically, we use pulse-coupled Izhikevich neurons connected as in the Caenorhabditis elegans neural networks as well as in networks with similar randomness and small-worldness. We analyse the effectiveness and robustness of the inference process under different observations and collective dynamics, contrasting the results obtained from using membrane potentials and inter-spike interval time-series. We find that overall, small-worldness favours network inference and degree heterogeneity hinders it. In particular, success rates in C. elegans networks -- that combine small-world properties with degree heterogeneity -- are closer to success rates in Erdos-Renyi network models rather than those in Watts-Strogatz network models. These results are relevant to understand better the relationship between topological properties and function in different neural networks.
小世界有利于网络推理
分析复杂系统的一个主要目标是通过对其行为的时间序列观察来推断其潜在的网络结构。推理过程通常通过使用双变量相似性度量来完成,例如互相关(CC),然而,支持或阻碍其成功的主要因素仍然令人困惑。在这里,我们使用合成神经元模型来揭示阻碍或促进从CC测量推断底层网络的主要拓扑属性。具体来说,我们使用脉冲耦合的Izhikevich神经元连接秀丽隐杆线虫的神经网络以及具有类似随机性和小世界性的网络。我们分析了在不同观测值和集体动力学下推理过程的有效性和鲁棒性,对比了使用膜电位和尖峰间隔时间序列获得的结果。研究发现,总体而言,小世界有利于网络推理,而程度异质性则阻碍了网络推理。特别是,秀丽隐线虫网络的成功率——结合了小世界属性和程度异质性——更接近Erdos-Renyi网络模型的成功率,而不是Watts-Strogatz网络模型的成功率。这些结果对于更好地理解不同神经网络的拓扑性质与功能之间的关系具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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