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Improved rates for identification of partially observed linear dynamical systems

International Conference on Algorithmic Learning Theory (ALT), 2020
Abstract

Identification of a linear time-invariant dynamical system from partial observations is a fundamental problem in control theory. A natural question is how to do so with non-asymptotic statistical rates depending on the inherent dimensionality (order) dd of the system, rather than on the sufficient rollout length or on 11ρ(A)\frac1{1-\rho(A)}, where ρ(A)\rho(A) is the spectral radius of the dynamics matrix. We develop the first algorithm that given a single trajectory of length TT with gaussian observation noise, achieves a near-optimal rate of O~(dT)\widetilde O\left(\sqrt\frac{d}{T}\right) in H2\mathcal{H}_2 error for the learned system. We also give bounds under process noise and improved bounds for learning a realization of the system. Our algorithm is based on low-rank approximation of Hankel matrices of geometrically increasing sizes.

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