Moderate deviations in a class of stable but nearly unstable processes
Abstract
We consider a stable but nearly unstable autoregressive process of any order. The bridge between stability and instability is expressed by a time-varying companion matrix An with spectral radius (An) < 1 satisfying (An) → 1. In that framework, we establish a moderate deviation principle for the empirical covariance only relying on the elements of An through 1-(An) and, as a by-product, we establish a moderate deviation principle for the OLS estimator when , the renormalized asymptotic variance of the process, is invertible. Finally, when is singular, we also provide a compromise in the form of a moderate deviation principle for a penalized version of the estimator. Our proofs essentially rely on truncations and deviations of mn--dependent sequences, with an unbounded rate (mn).
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