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ONLINE IDENTIFICATION OF DIRECTIONAL GRAPH TOPOLOGIES CAPTURING DYNAMIC AND NONLINEAR DEPENDENCIES?

机译:在线识别定向图拓扑捕获动态和非线性依赖性?

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Linear structural vector autoregressive models (SVARMs) have well-documented merits for topology inference of directional graphs emerging in diverse applications, including gene-regulatory, brain, and social networks. Although simple and tractable, linear SVARMs cannot capture nonlinearities that are inherent to complex systems, such as the human brain, that can also vary over time. Given nodal measurements, these considerations motivate the dynamic nonlinear SVARM approach developed here to track the possibly directed and dynamic nonlinear interactions among network nodes. For slow-varying topologies, nonlinear model parameters are estimated via functional stochastic gradient descent. Numerical tests showcase the effectiveness of the novel algorithms in unveiling sparse dynamically-evolving topologies.
机译:线性结构矢量自回归模型(SVARMS)对各种应用中出现的定向图的拓扑结构有良好的文档,包括基因 - 监管,大脑和社交网络。虽然简单且易易,线性SVARM不能捕获复杂系统所固有的非线性,例如人类大脑,也可以随着时间而变化。给定节点测量,这些考虑因素激励了这里开发的动态非线性SVARM方法,以跟踪网络节点之间可能的指导和动态的非线性交互。对于慢速变化的拓扑,通过功能随机梯度下降估计非线性模型参数。数值测试展示了新型算法在揭示稀疏动态演化拓扑中的有效性。

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