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Journal ArticleDOI

On the Problem of Reconstructing an Unknown Topology via Locality Properties of the Wiener Filter

TLDR
A methodology for identifying the interrelatedness structure of dynamically related time series data is presented that also allows for the presence of loops in the connectivity structure and it is shown that when the linear dynamic graph is allowed to admit non-causal weights, then the links structure can be recovered with the possibility of identifying spurious connections.
Abstract
Determining interrelatedness structure of various entities from multiple time series data is of significant interest to many areas. Knowledge of such a structure can aid in identifying cause and effect relationships, clustering of similar entities, identification of representative elements and model reduction. The majority of existing results are based on correlation based indices which effectively assume a static relationship between the time series data and are not suitable for detecting interrelatedness when the time series are dynamically related or when the time series involve loops. In this paper, a methodology for identifying the interrelatedness structure of dynamically related time series data is presented that also allows for the presence of loops in the connectivity structure. A linear dynamic graph model is presented where it is assumed that each time series data is the sum of an independent stochastic noise source and a dynamically weighted sum of other time series data. A link is assumed to be present between two time series if the weight of a time series, which is a linear time-invariant filter, is nonzero in the formation of the other. Reconstruction of the link connectivity structure under various scenarios is considered. It is shown that when the linear dynamic graph is allowed to admit non-causal weights, then the links structure can be recovered with the possibility of identifying spurious connections. However, it is shown that the spurious links remain local, where, a spurious link is restricted to be within one hop of a true link. Furthermore, strategies for exact reconstruction of the link structure when the weights are restricted to be causal are developed. The main tools for determining the network topology are based on variations of Wiener filtering. A significant insight provided by the article is that, in the class of network models considered in the paper, the Wiener filter estimating a stochastic process based on other processes remains local in the sense that the Wiener filter utilizes only measurements local to the node being estimated.

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Citations
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Journal ArticleDOI

Directed Information Graphs

TL;DR: In this article, the authors propose a graphical model for representing networks of stochastic processes, the minimal generative model graph, which is based on reduced factorizations of the joint distribution over time.
Journal ArticleDOI

A Sparse Bayesian Approach to the Identification of Nonlinear State-Space Systems

TL;DR: A method and its associated algorithm to identify the system nonlinear functional forms and their associated parameters from a limited number of time-series data points using a Bayesian viewpoint and an efficient iterative re-weighted ℓ1-minimization algorithm is proposed.
Journal ArticleDOI

Identification of Dynamic Models in Complex Networks With Prediction Error Methods: Predictor Input Selection

TL;DR: In this paper it is shown that there is considerable freedom as to which variables can be included as inputs to the predictor, while still obtaining consistent estimates of the particular module of interest.
Journal ArticleDOI

Identifiability of linear dynamic networks

TL;DR: The notion of network identifiability is introduced, as a property of a parametrized model set, that ensures that different network models can be distinguished from each other when performing identification on the basis of measured data.
Journal ArticleDOI

Topology Identification of Directed Dynamical Networks via Power Spectral Analysis

TL;DR: In this article, the problem of identifying the topology of an unknown weighted, directed network of LTI systems stimulated by wide-sense stationary noises of unknown power spectral densities is addressed.
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TL;DR: It is demonstrated that the algorithms proposed are highly effective at discovering community structure in both computer-generated and real-world network data, and can be used to shed light on the sometimes dauntingly complex structure of networked systems.
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