SYLGAug 23, 2022

Learning linear modules in a dynamic network with missing node observations

arXiv:2208.10995v1h-index: 42
Originality Incremental advance
AI Analysis

This work solves a specific system identification problem for researchers in control or network analysis, but it is incremental as it builds on existing kernel and inference methods.

The paper addresses the problem of identifying a target module in a dynamic network when some node observations are missing, which can lead to biased estimates and high computational complexity. It proposes a data augmentation method using regularized kernel-based techniques and approximate inference, resulting in improved accuracy for the estimated module as demonstrated in simulations.

In order to identify a system (module) embedded in a dynamic network, one has to formulate a multiple-input estimation problem that necessitates certain nodes to be measured and included as predictor inputs. However, some of these nodes may not be measurable in many practical cases due to sensor selection and placement issues. This may result in biased estimates of the target module. Furthermore, the identification problem associated with the multiple-input structure may require determining a large number of parameters that are not of particular interest to the experimenter, with increased computational complexity in large-sized networks. In this paper, we tackle these problems by using a data augmentation strategy that allows us to reconstruct the missing node measurements and increase the accuracy of the estimated target module. To this end, we develop a system identification method using regularized kernel-based methods coupled with approximate inference methods. Keeping a parametric model for the module of interest, we model the other modules as Gaussian Processes (GP) with a kernel given by the so-called stable spline kernel. An Empirical Bayes (EB) approach is used to estimate the parameters of the target module. The related optimization problem is solved using an Expectation-Maximization (EM) method, where we employ a Markov-chain Monte Carlo (MCMC) technique to reconstruct the unknown missing node information and the network dynamics. Numerical simulations on dynamic network examples illustrate the potentials of the developed method.

Foundations

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