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Continuously Indexed Graphical Models

5 February 2023
Kartik G. Waghmare
V. Panaretos
ArXiv (abs)PDFHTML
Abstract

Let X={Xu}u∈UX = \{X_{u}\}_{u \in U}X={Xu​}u∈U​ be a real-valued Gaussian process indexed by a set UUU. It can be thought of as an undirected graphical model with every random variable XuX_{u}Xu​ serving as a vertex. We characterize this graph in terms of the covariance of XXX through its reproducing kernel property. Unlike other characterizations in the literature, our characterization does not restrict the index set UUU to be finite or countable, and hence can be used to model the intrinsic dependence structure of stochastic processes in continuous time/space. Consequently, the said characterization is not (and apparently cannot be) of the inverse-zero type. This poses novel challenges for the problem of recovery of the dependence structure from a sample of independent realizations of XXX, also known as structure estimation. We propose a methodology that circumvents these issues, by targeting the recovery of the underlying graph up to a finite resolution, which can be arbitrarily fine and is limited only by the available sample size. The recovery is shown to be consistent so long as the graph is sufficiently regular in an appropriate sense, and convergence rates are provided. Our methodology is illustrated by simulation and two data analyses.

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