A flexible approach to parametric inference in nonlinear and time varying time series models

G.M. Koop, S. Potter

Research output: Contribution to journalArticle

4 Citations (Scopus)
37 Downloads (Pure)

Abstract

Many structural break and regime-switching models have been used with macroeconomic and …nancial data. In this paper, we develop an extremely flexible parametric model which can accommodate virtually any of these speci…cations and does so in a simple way which allows for straightforward Bayesian inference. The basic idea underlying our model is that it adds two simple concepts to a standard state space framework. These ideas are ordering and distance. By ordering the data in various ways, we can accommodate a wide variety of nonlinear time series models, including those with regime-switching and structural breaks. By allowing the state equation variances to depend on the distance between observations, the parameters can evolve in a wide variety of ways, allowing for everything from models exhibiting abrupt change (e.g. threshold autoregressive models or standard structural break models) to those which allow for a gradual evolution of parameters (e.g. smooth transition autoregressive models or time varying parameter models). We show how our model will (approximately) nest virtually every popular model in the regime-switching and structural break literatures. Bayesian econometric methods for inference in this model are developed. Because we stay within a state space framework, these methods are relatively straightforward, drawing on the existing literature. We use arti…cial data to show the advantages of our approach, before providing two empirical illustrations involving the modeling of real GDP growth.
Original languageEnglish
Pages (from-to)134-150
Number of pages17
JournalJournal of Econometrics
Volume159
Issue number1
DOIs
Publication statusPublished - Nov 2010

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Parametric Inference
Time Series Models
Time series
Time-varying
Structural Breaks
Regime Switching
Model
State Space
Threshold Autoregressive Model
Nonlinear Time Series Model
Regime-switching Model
Transition Model
Time-varying Parameters
Nest
Macroeconomics
State Equation
Bayesian inference
Autoregressive Model
Time series models
Inference

Keywords

  • bayesian
  • structural break
  • threshold autoregressive
  • regime switching
  • space model economics

Cite this

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A flexible approach to parametric inference in nonlinear and time varying time series models. / Koop, G.M.; Potter, S.

In: Journal of Econometrics, Vol. 159, No. 1, 11.2010, p. 134-150.

Research output: Contribution to journalArticle

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