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Inference of time-varying networks through transfer entropy, the case of a Boolean network model

机译:通过传输熵,带布尔网络模型的情况推断时变网络

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摘要

Inferring network topologies from the time series of individual units is of paramount importance in the study of biological and social networks. Despite considerable progress, our success in network inference is largely limited to static networks and autonomous node dynamics, which are often inadequate to describe complex systems. Here, we explore the possibility of reconstructing time-varying weighted topologies through the information-theoretic notion of transfer entropy. We focus on a Boolean network model in which the weight of the links and the spontaneous activity periodically vary in time. For slowly-varying dynamics, we establish closed-form expressions for the stationary periodic distribution and transfer entropy between each pair of nodes. Our results indicate that the instantaneous weight of each link is mapped into a corresponding transfer entropy value, thereby affording the possibility of pinpointing the dominant weights at each time. However, comparing transfer entropy readings at different times may provide erroneous estimates of the strength of the links in time, due to a counterintuitive modulation of the information flow by the non-autonomous dynamics. In fact, this time variation should be used to scale transfer entropy values toward the correct inference of the time evolution of the network weights. This study constitutes a necessary step toward a mathematically-principled use of transfer entropy to reconstruct time-varying networks. Published by AIP Publishing.
机译:从各个单位的时间序列推断出网络拓扑对生物和社交网络的研究至关重要。尽管进展相当大,但我们在网络推理中的成功主要仅限于静态网络和自主节点动态,这通常不足以描述复杂系统。在这里,我们探讨通过传输熵的信息理论概念重建时变量拓扑的可能性。我们专注于布尔网络模型,其中链路的重量和自发活动周期性地变化。对于缓慢变化的动态,我们建立用于静止的周期性分布和每对节点之间的熵的闭合表达式。我们的结果表明,每个链路的瞬时重量被映射到相应的转移熵值,从而提供每次针对各个定位主体权重的可能性。然而,由于非自主动态的信息流的反向调制,相比,不同时间在不同时间的转移熵读数可以提供错误的链路强度的错误估计。事实上,这种时间变化应该用于将转移熵值朝向网络权重的时间演变的正确推断。本研究构成了朝向数学上原理地使用转移熵的必要步骤,以重建时变网络。通过AIP发布发布。

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  • 来源
    《Chaos》 |2018年第1期|共12页
  • 作者单位

    NYU Dept Mech &

    Aerosp Engn Tandon Sch Engn Brooklyn NY 11201 USA;

    Tech Univ Cartagena Dept Quantitat Methods &

    Informat Calle Real 3 Cartagena 30201 Spain;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 自然科学总论;
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