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Inference for Non-Stationary Heavy Tailed Time Series

21 December 2022
Fumiya Akashi
K. Fokianos
Junichi Hirukawa
ArXiv (abs)PDFHTML
Abstract

We consider the problem of inference for non-stationary time series with heavy-tailed error distribution. Under a time-varying linear process framework we show that there exists a suitable local approximation by a stationary process with heavy-tails. This enable us to introduce a local approximation-based estimator which estimates consistently time-varying parameters of the model at hand. To develop a robust method, we also suggest a self-weighing scheme which is shown to recover the asymptotic normality of the estimator regardless of whether the finite variance of the underlying process exists. Empirical evidence favoring this approach is provided.

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