Learning Transition Operators From Sparse Space-Time Samples

Abstract

We consider the nonlinear inverse problem of learning a transition operator A from partial observations at T different times, in the form of sparse observations of entries of the powers $A,A^2,…,A^T$. We address the nonlinearity of this spatio-temporal transition operator recovery problem by a suitable embedding into block-Hankel matrices, transforming it to a low-rank matrix completion problem, even when A has full rank. For both a uniform and an adaptive random space-time sampling model, we quantify the recoverability of the transition operator via suitable measures of incoherence of these block-Hankel embedding matrices. For graph transition operators these measures of incoherence depend on the interplay between the dynamics and the graph topology. We develop a suitable non-convex iterative reweighted least squares (IRLS) algorithm, establish its quadratic local convergence, and show that, in optimal scenarios, no more than $O(r n log(nT))$ space-time samples are sufficient to ensure accurate recovery of a rank-$r$ operator A of size $n \times n$. We provide an efficient implementation of the proposed IRLS algorithm with space complexity of order $O(r nT)$ and per-iteration time complexity linear in $n$, and confirm in numerical experiments that for several graph transition operators, the theoretical findings accurately track empirical phase transitions.

Publication
IEEE Transactions on Information Theory, 70(9), 6412–6446
Christian Kümmerle
Christian Kümmerle
Assistant Professor
School of Data, Mathematical, and Statistical Sciences
Department of Computer Science
Institute for Artificial Intelligence

I am passionate about the potential of AI and operations research for Lightning network operations and about efficiency gains within AI models that can be unlocked by combining smoothing, parsimony, structured optimization.