Nonstationary Gauss-Markov Processes: Parameter Estimation and Dispersion
Abstract
This paper provides a precise error analysis for the maximum likelihood estimate aML(u1n) of the parameter a given samples u1n = (u1, …, un)' drawn from a nonstationary Gauss-Markov process Ui = a Ui-1 + Zi,~i≥ 1, where U0 = 0, a> 1, and Zi's are independent Gaussian random variables with zero mean and variance σ2. We show a tight nonasymptotic exponentially decaying bound on the tail probability of the estimation error. Unlike previous works, our bound is tight already for a sample size of the order of hundreds. We apply the new estimation bound to find the dispersion for lossy compression of nonstationary Gauss-Markov sources. We show that the dispersion is given by the same integral formula that we derived previously for the asymptotically stationary Gauss-Markov sources, i.e., |a| < 1. New ideas in the nonstationary case include separately bounding the maximum eigenvalue (which scales exponentially) and the other eigenvalues (which are bounded by constants that depend only on a) of the covariance matrix of the source sequence, and new techniques in the derivation of our estimation error bound.
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