Moving average stochastic volatility models with application to inflation forecast

We introduce a new class of models that has both stochastic volatility and moving average errors, where the conditional mean has a state space representation. Having a moving average component, however, means that the errors in the measurement equation are no longer serially independent, and estimat...

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Veröffentlicht in:Journal of econometrics 2013-10, Vol.176 (2), p.162-172
1. Verfasser: Chan, Joshua C.C.
Format: Artikel
Sprache:eng
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Zusammenfassung:We introduce a new class of models that has both stochastic volatility and moving average errors, where the conditional mean has a state space representation. Having a moving average component, however, means that the errors in the measurement equation are no longer serially independent, and estimation becomes more difficult. We develop a posterior simulator that builds upon recent advances in precision-based algorithms for estimating these new models. In an empirical application involving US inflation we find that these moving average stochastic volatility models provide better in-sample fitness and out-of-sample forecast performance than the standard variants with only stochastic volatility.
ISSN:0304-4076
1872-6895
DOI:10.1016/j.jeconom.2013.05.003