Subgeometrically ergodic autoregressions with autoregressive conditional heteroskedasticity
Econom. Theory 41 (2025) 218-248 In this paper, we consider subgeometric (specifically, polynomial) ergodicity of univariate nonlinear autoregressions with autoregressive conditional heteroskedasticity (ARCH). The notion of subgeometric ergodicity was introduced in the Markov chain literature in 198...
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Zusammenfassung: | Econom. Theory 41 (2025) 218-248 In this paper, we consider subgeometric (specifically, polynomial) ergodicity
of univariate nonlinear autoregressions with autoregressive conditional
heteroskedasticity (ARCH). The notion of subgeometric ergodicity was introduced
in the Markov chain literature in 1980s and it means that the transition
probability measures converge to the stationary measure at a rate slower than
geometric; this rate is also closely related to the convergence rate of
$\beta$-mixing coefficients. While the existing literature on subgeometrically
ergodic autoregressions assumes a homoskedastic error term, this paper provides
an extension to the case of conditionally heteroskedastic ARCH-type errors,
considerably widening the scope of potential applications. Specifically, we
consider suitably defined higher-order nonlinear autoregressions with possibly
nonlinear ARCH errors and show that they are, under appropriate conditions,
subgeometrically ergodic at a polynomial rate. An empirical example using
energy sector volatility index data illustrates the use of subgeometrically
ergodic AR-ARCH models. |
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DOI: | 10.48550/arxiv.2205.11953 |