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Tracking dynamic piecewise-constant network topologies via adaptive tensor factorization

机译:通过自适应张量分解跟踪动态分段常数网络拓扑

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This paper deals with tracking dynamic piecewise-constant network topologies that underpin complex systems including online social networks, neural pathways in the brain, and the world-wide web. Leveraging a structural equation model (SEM) in which only second-order statistics of exogenous inputs are known, the topology inference problem is recast using three-way tensors constructed from observed nodal data. To facilitate real-time operation, an adaptive parallel factor (PARAFAC) tensor decomposition is advocated to track the topology-revealing tensor factors. Preliminary tests on simulated data corroborate the effectiveness of the novel tensor-based approach.
机译:本文涉及跟踪动态分段连续网络拓扑,这些拓扑基础支持复杂的系统,包括在线社交网络,大脑中的神经通路和万维网。利用其中仅了解外源输入的二阶统计信息的结构方程模型(SEM),使用根据观测到的节点数据构造的三向张量重塑拓扑推断问题。为了促进实时操作,提倡使用自适应并行因子(PARAFAC)张量分解来跟踪显示拓扑的张量因子。对模拟数据的初步测试证实了基于张量的新颖方法的有效性。

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