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Tensor Recovery in High-Dimensional Ising Models

Journal of Multivariate Analysis (J. Multivar. Anal.), 2023
Abstract

The kk-tensor Ising model is an exponential family on a pp-dimensional binary hypercube for modeling dependent binary data, where the sufficient statistic consists of all kk-fold products of the observations, and the parameter is an unknown kk-fold tensor, designed to capture higher-order interactions between the binary variables. In this paper, we describe an approach based on a penalization technique that helps us recover the signed support of the tensor parameter with high probability, assuming that no entry of the true tensor is too close to zero. The method is based on an 1\ell_1-regularized node-wise logistic regression, that recovers the signed neighborhood of each node with high probability. Our analysis is carried out in the high-dimensional regime, that allows the dimension pp of the Ising model, as well as the interaction factor kk to potentially grow to \infty with the sample size nn. We show that if the minimum interaction strength is not too small, then consistent recovery of the entire signed support is possible if one takes n=Ω((k!)8d3log(p1k1))n = \Omega((k!)^8 d^3 \log \binom{p-1}{k-1}) samples, where dd denotes the maximum degree of the hypernetwork in question. Our results are validated in two simulation settings, and applied on a real neurobiological dataset consisting of multi-array electro-physiological recordings from the mouse visual cortex, to model higher-order interactions between the brain regions.

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