Volume 36, Issue 2
Original Article

A Gaussian Mixture Autoregressive Model for Univariate Time Series

Leena Kalliovirta

Corresponding Author

Department of Political and Economic Studies, University of Helsinki, University of Helsinki, Finland

Correspondence to: Leena Kalliovirta, Department of Political and Economic Studies, University of Helsinki, Helsinki, Finland.

E‐mail:leena.kalliovirta@helsinki.fi

Search for more papers by this author
Mika Meitz

Department of Political and Economic Studies, University of Helsinki, University of Helsinki, Finland

Search for more papers by this author
Pentti Saikkonen

Department of Mathematics and Statistics, University of Helsinki, Helsinki, Finland

Search for more papers by this author
First published: 16 December 2014
Citations: 13

Abstract

The Gaussian mixture autoregressive model studied in this article belongs to the family of mixture autoregressive models, but it differs from its previous alternatives in several advantageous ways. A major theoretical advantage is that, by the definition of the model, conditions for stationarity and ergodicity are always met and these properties are much more straightforward to establish than is common in nonlinear autoregressive models. Another major advantage is that, for a pth‐order model, explicit expressions of the stationary distributions of dimension p + 1 or smaller are known and given by mixtures of Gaussian distributions with constant mixing weights. In contrast, the conditional distribution given the past observations is a Gaussian mixture with time‐varying mixing weights that depend on p lagged values of the series in a natural and parsimonious way. Because of the known stationary distribution, exact maximum likelihood estimation is feasible and one can assess the applicability of the model in advance by using a non‐parametric estimate of the stationary density. An empirical example with interest rate series illustrates the practical usefulness and flexibility of the model, particularly in allowing for level shifts and temporary changes in variance. Copyright © 2014 Wiley Publishing Ltd

Number of times cited according to CrossRef: 13

  • An autoregressive model based on the generalized hyperbolic distribution, Scandinavian Journal of Statistics, 10.1111/sjos.12427, 47, 3, (787-816), (2020).
  • Testing for observation-dependent regime switching in mixture autoregressive models, Journal of Econometrics, 10.1016/j.jeconom.2020.04.048, (2020).
  • MIXTURES OF NONLINEAR POISSON AUTOREGRESSIONS, Journal of Time Series Analysis, 10.1111/jtsa.12558, 0, 0, (2020).
  • Non‐Linearity and Cross‐Country Dependence of Income Inequality, Review of Income and Wealth, 10.1111/roiw.12377, 66, 1, (227-249), (2019).
  • Iron ore price and the AUD exchange rate: A Markov approach, The Journal of International Trade & Economic Development, 10.1080/09638199.2019.1655087, (1-16), (2019).
  • Practical and theoretical aspects of mixture‐of‐experts modeling: An overview, WIREs Data Mining and Knowledge Discovery , 10.1002/widm.1246, 8, 4, (2018).
  • State Space Models with Endogenous Regime Switching, SSRN Electronic Journal, 10.2139/ssrn.3334920, (2018).
  • State Space Models With Endogenous Regime Switching, SSRN Electronic Journal, 10.2139/ssrn.3290704, (2018).
  • A Mixture Autoregressive Model Based on Student's ttDistribution, SSRN Electronic Journal, 10.2139/ssrn.3177419, (2018).
  • A new approach to model regime switching, Journal of Econometrics, 10.1016/j.jeconom.2016.09.005, 196, 1, (127-143), (2017).
  • Gaussian mixture vector autoregression, Journal of Econometrics, 10.1016/j.jeconom.2016.02.012, 192, 2, (485-498), (2016).
  • Maximum Likelihood Estimation in Possibly Misspecified Dynamic Models with Time Inhomogeneous Markov Regimes, SSRN Electronic Journal, 10.2139/ssrn.2887771, (2016).
  • Nonlinearity and Cross-Country Dependence of Income Inequality, SSRN Electronic Journal, 10.2139/ssrn.2438361, (2014).

The full text of this article hosted at iucr.org is unavailable due to technical difficulties.