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Efficient learning of hidden state LTI state space models of unknown order

3 February 2022
Boualem Djehiche
Othmane Mazhar
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Abstract

The aim of this paper is to address two related estimation problems arising in the setup of hidden state linear time invariant (LTI) state space systems when the dimension of the hidden state is unknown. Namely, the estimation of any finite number of the system's Markov parameters and the estimation of a minimal realization for the system, both from the partial observation of a single trajectory. For both problems, we provide statistical guarantees in the form of various estimation error upper bounds, \rank\rank\rank recovery conditions, and sample complexity estimates. Specifically, we first show that the low \rank\rank\rank solution of the Hankel penalized least square estimator satisfies an estimation error in SpS_pSp​-norms for p∈[1,2]p \in [1,2]p∈[1,2] that captures the effect of the system order better than the existing operator norm upper bound for the simple least square. We then provide a stability analysis for an estimation procedure based on a variant of the Ho-Kalman algorithm that improves both the dependence on the dimension and the least singular value of the Hankel matrix of the Markov parameters. Finally, we propose an estimation algorithm for the minimal realization that uses both the Hankel penalized least square estimator and the Ho-Kalman based estimation procedure and guarantees with high probability that we recover the correct order of the system and satisfies a new fast rate in the S2S_2S2​-norm with a polynomial reduction in the dependence on the dimension and other parameters of the problem.

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