4.7 Article

Tensor Decompositions for Identifying Directed Graph Topologies and Tracking Dynamic Networks

Journal

IEEE TRANSACTIONS ON SIGNAL PROCESSING
Volume 65, Issue 14, Pages 3675-3687

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TSP.2017.2698369

Keywords

Structural equation models; CANDECOMP/PARAFAC (CP) decomposition; network topology inference

Funding

  1. NSF [1500713]
  2. NIH [1R01GM104975-01]
  3. Directorate For Engineering
  4. Div Of Electrical, Commun & Cyber Sys [1500713] Funding Source: National Science Foundation

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Directed networks are pervasive both in nature and engineered systems, often underlying the complex behavior observed in biological systems, microblogs and social interactions over the web, as well as global financial markets. Since their structures are often unobservable, in order to facilitate network analytics, one generally resorts to approaches capitalizing onmeasurable nodal processes to infer the unknown topology. Structural equation models (SEMs) are capable of incorporating exogenous inputs to resolve inherent directional ambiguities. However, conventional SEMs assume full knowledge of exogenous inputs, which may not be readily available in some practical settings. This paper advocates a novel SEM-based topology inference approach that entails factorization of a three-way tensor, constructed from the observed nodal data, using the well-known parallel factor (PARAFAC) decomposition. It turns out that second-order piecewise stationary statistics of exogenous variables suffice to identify the hidden topology. Capitalizing on the uniqueness properties inherent to high-order tensor factorizations, it is shown that topology identification is possible under reasonably mild conditions. In addition, to facilitate real-time operation and inference of time-varying networks, an adaptive (PARAFAC) tensor decomposition scheme that tracks the topology-revealing tensor factors is developed. Extensive tests on simulated and real stock quote data demonstrate the merits of the novel tensor-based approach.

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